Issue 4 - The Technical Analyst
Transcription
Issue 4 - The Technical Analyst
may 2004 www.technicalanalyst.co.uk Brent Crude The slippery climb upwards Andrews’ Pitchfork Talking to Ralph Acampora The day-of-the-week effect Why traders should look at what prices aren’t doing On getting TA the respect it deserves Monday blues and sunny Fridays Advertisements - STA and Paritech WELCOME Editor: Matthew Clements (MSTA) editor@technicalanalyst.co.uk Managing Editor: Jim Biss Editorial Board: Mikael Bask, Umea University, Sweden Tai-Leung Terence Chong, The Chinese University of Hong Kong Marketing: Vanessa Green Sales: Christopher Leigh Design: Paul Simpson The Technical Analyst is published by Clements Biss Economic Publications Ltd, 10-12 King Edward's Road, London E9 7SF Tel: +44 (0)20 8533 3025 Web: www.technicalanalyst.co.uk Email: editor@technicalanalyst.co.uk SUBSCRIPTIONS Subscription rates UK: £275 per annum Rest of world: £325 per annum For information, please contact: subscriptions@technicalanalyst.co.uk ADVERTISING For information, please contact: advertising@technicalanalyst.co.uk PRODUCTION Art, design and typesetting by all-Perception Ltd. Printed by The Friary Press ISSN(1742-8718) C y c l e s a r e c e n t r a l t o t h i s i s s u e o f T h e Te c h n i c a l A n a l y s t . S o m e c y c l e s , s u c h a s t h e d a y - o f - t h e - w e e k , a r e e a s y t o ta k e o n b o a r d . A ft e r a l l , i t ' s n o t m u c h o f a s u r p r i s e t o f i n d o u t t h a t , i n g e n e r a l , t h e m a r k e t s a r e i n a b e t t e r m o o d o n F r i d a y t h a n o n M o n d a y. Researchers from the National University of Singapore find evid e n c e f o r t h i s e ff e c t i n t h e s t o c k m a r k e ts o f A s i a , b u t a l s o g o f u r ther in trying to identify whether some weeks are gloomier or happier than others and in determining what the relationship is b e t w e e n t h e M o n d a y a n d t h e p r e c e d i n g F r i d a y. S o m e c y c l e s i n v o l v e a r h y t h m t h a t m a y h o l d s o m e ps y c h o l o g i c a l a n d e n v i r o n m e n ta l u n d e r p i n n i n g , s u c h a s t h o s e i m p l i c i t i n t h e f o u r w e e k r u l e , b u t w h i c h a r e h a r d e r t o e x p l a i n f u l l y. I n o u r a r t i c l e o n t h e four-week rule, the author provides some practical advice on how to shore-up this general phenomenon with practical rules and complim e n ta r y a n a l y s i s . F i n a l l y, w e ta k e t h e c y c l e t o t h e f r o n t i e r s o f c o m p r e h e n s i o n w i t h a n article on Bradley's siderograph, a means of using astrology to forecast mass market highs and lows. Despite any natural scepticism for this subject area, we include this article because the publ i s h e d r e s u l ts a r e i m p r e s s i v e a n d s h o u l d b e s c r u t i n i s e d f u r t h e r. Also in this issue: a practical article on using Andrews' Pitchfork a n d n e w r e s e a r c h o n n o n - l i n e a r i t y i n t h e s t o c k m a r k e ts a n d f o r e i g n exchange rates of South-East Asia. In the latter article, the authors characterise the type of non-linearity present and go on to suggest w h i c h TA t e c h n i q u e s s h o u l d w o r k b e t t e r t h a n o t h e r s a s a r e s u l t . I f y o u h a v e a n y c o m m e n ts o n a n y a s p e c t o f T h e Te c h n i c a l A n a l y s t or just have something to say on the subject, please email them to editor@technicalanalyst.co.uk. © 2004 Clements Biss Economic Publications Limited. All rights reserved. Neither this publication nor any part of it may be reproduced, stored in a retrieval system, or transmitted in any form or by any means, electronic, mechanical, photocopying, recording or otherwise, without the prior permission of Clements Biss Economic Publications Limited. While the publisher believes that all information contained in this publication was correct at the time of going to press, they cannot accept liability for any errors or omissions that may appear or loss suffered directly or indirectly by any reader as a result of any advertisement, editorial, photographs or other material published in The Technical Analyst. No statement in this publication is to be considered as a recommendation or solicitation to buy or sell securities or to provide investment, tax or legal advice. Readers should be aware that this publication is not intended to replace the need to obtain professional advice in relation to any topic discussed. Matthew Clements Editor April 2004 THE TECHNICAL ANALYST 1 CONTENTS 04 30 41 43 44 48 2 THE TECHNICAL ANALYST Product News The Technical Analyst Talks To... Ralph Acampora, Managing Director, Prudential Equity Group Book Review Advanced Swing Trading by John Crane Letters The dangers of data snooping Commitments of Traders Report Training & Events Diary April 2004 MAY 2004 06 12 32 Market Views 06 A head-and-shoulders pattern in USD/JPY 08 Brent crude 10 Making waves in the US dollar, Nikkei and fixed income markets Techniques 12 Andrews’ pitchfork – the price failure rule 14 The four-week rule 18 Using the McClellan Oscillator 22 Volume spikes and index reversals 26 The inverse fisher transform 28 Astronomy and the Dow Jones Subject Matters 32 Monday blues and sunny Fridays 34 Why have the returns to managed futures funds decreased? 38 Nonlinearity favours nonlinear TA techniques May 2004 THE TECHNICAL ANALYST 3 Product News MarketWatch.com launches real-time ser vice with eSignal ChartFilter announces integrated Stock To o l s s o ft w a r e ChartFilter has told The Technical Analyst that its new analytical software, Stock Tools, will be available by June 2004. It will comprise six integrated tools that can be downloaded and installed from their website MarketWatch.com, Inc., a leading multi-media publisher, has teamed up with eSignal to launch CBS MarketWatch LIVE, an online streaming, real-time news and market data product that is also compatible with portable handheld devices. This new service provides tick-bytick quotes from more than 75 global markets, integrated news and commentary, streaming charts, and market depth data. Subscribers also have use of more than 15 analytical studies as well as market scanners with customizable searches that screen the market for buy and sell opportunities. (www.chartfilter.com). These are: advanced technical charting; an alert system that allows you to create complex, staged alerts using technical indicators and fundamentals on multiple stocks; screening and backtesting; fundamentals to export or print; and a portfo- CBS MarketWatch LIVE is available at www.marketwatch.com/cbslive from $14.95 per month, plus exchange fees and fees for any addon services. A free 30-day trial is available. lio manager. "We wanted to make it easy for technical analysts to get the most out of their own analytical abilities and imaginations," said the company CEO, Doug Hubscher. The monthly or yearly subscription includes end-of-day data (ComStock) as well as auto- www.marketwatch.com www.esignal.com matic upgrades. eSignal and FXCM create integrated FX trading solution eSignal and Forex Capital Markets (FXCM), a leader in online FX trading, have come together to offer a new feature that allows traders to monitor market activity, identify trading opportunities and execute trades from a single, integrated platform. The feature integrates eSignal's streaming market data, charting package and customizable formulas with FXCM's direct access execution abilities, thus eliminating the need to switch between applications to monitor and execute Forex transactions. With eSignal and an FXCM account, 4 THE TECHNICAL ANALYST eSignal users may now: execute FX trades on FXCM's trading platform via a direct link from eSignal's market data and charting application; send market orders directly to FXCM's trading platform; obtain split-second trade executions from FXCM; and monitor open positions via a direct link from eSignal to FXCM's trading platform "FX trading offers 24-hour trading, transparent pricing, and low transaction costs. As a result, the active trading community is embracing FX trading in record numbers and looking for high-quality brokerage and analytic products," said Drew Niv, May 2004 chief executive officer, Forex Capital Markets. "Our relationship with eSignal gives FXCM subscribers a consistent means for not only back testing diversification strategies, but also for charting, analyzing and facilitating execution of timely Spot FX trades." Access to FX trading through FXCM is available to eSignal clients who have a brokerage account with FXCM. Interested clients should visit www.esignal.com. To open a brokerage account with FXCM, visit www.fxcm.com Product News Pronet Analytics.com set sails for China Pronet Analytics.com Limited has agreed terms for distribution of its service to clients of FXCM Asia Ltd in Greater China. Under the terms of the deal, FXCM Asia will offer Pronet's FX research service to new and current clients in the region. The commercial terms are structured so that FXCM Asia will continue to offer what are believed to be the most competitive dealing spreads in the region and the client will pay no additional fees for access to Pronet's research. Shane Smith, Group CEO of Pronet Analytics.com, told The Technical Analyst: "Access to the China market is a very exciting development for the Group. China presents an opportunity for many US and European firms generally, but it is worth enumerating how large that opportunity might be for Pronet Analytics.com: FXCM is the leading non-domestic FX online broker for mainland China, serving also Singapore and Taiwan, and since opening its office in Hong Kong in March 2003, has seen month-on-month growth in accounts of 150%. China is now the fourth largest trading nation in the world, which itself creates a huge FX requirement, but in addition overseas funds are being repatriat- ed at an unprecedented rate, putting pressure on the Yuan. Irrespective of whether the Yuan itself eventually floats, individuals and companies are anyway allowed to trade foreign currencies, and also have a famous propensity to speculate. Internet penetration is growing, and with 80 million current subscribers China is second only to the US and is on course to overtake it as the most wired nation on earth. All this points to a large and growing demand for web-delivered research services to assist in better decision-making." www.pronetanalytics.com U pd a ta Proquote supplies 500 screens to TD Waterhouse a n n o u n c e s c o m pa ta b i l i t y w i t h M y Tr a c k The London Stock Exchange has announced that Proquote, its trading and market data business, has secured its biggest deal to date with an agreement to supply 500 screens to TD Waterhouse. TD Waterhouse, one of the UK's largest execution-only brokers, has ordered the screens to support the launch of ProTrader™, its integrated market data and dealing service for retail investors. After announcing Bloomberg Compatibility last month, Updata has announced that its Technical Analyst software is now compatible with the MyTrack data feed. To coincide with this, Updata has also launced a US site for both Bloomberg and MyTrack users. The new order follows one for 125 screens in September 2003, and means TD Waterhouse will be Proquote's largest customer, accounting for just over a quarter of all Proquote's installed screens. www.updataTA.com May 2004 THE TECHNICAL ANALYST 5 Market Views A HEAD-AND-SHOULDERS PATTERN IN USD/JPY by Kevin Edgeley he recent US dollar recovery has prompted concern of a more significant reversal of the long-term dollar bear trend. A look at the dollar index chart (Figure 1) shows the market probing above the long-term bear channel line from early 2002. As yet, this potential long-term trend reversal is not mirrored in the USD/JPY chart (see Figure 2), but there are certainly signs of further near-term corrective strength before the dollar resumes its path lower. Other major crosses (EUR/USD and USD/CHF) have traded dollar positively through their 200day moving averages. Weekly momentum indicators (stochastic and MACD) for USD/JPY have turned higher showing divergence at the recent lows. Whilst this pattern is a warning sign of loss of trend strength, one would normally want to see a trendline break to confirm a reversal. In USD/JPY the dom- T Figure 1. 6 THE TECHNICAL ANALYST May 2004 inant trendline from February 2002 is some way above current prices. The long-term pattern in USD/JPY shows a head-and-shoulders which developed from the left shoulder low in September 2001 at 115.50 through the head in January 2002 at 135.20 to the extended right shoulder base formed with a long-term descending triangle from July 2002 to September 2003. The flat neckline was broken in September of last year and was followed by a large weekly breakaway gap after the Dubai G7 meeting. Subsequent price action formed a declining wedge over the ensuing 5 months. The Bank of Japan was actively intervening during this period to limit yen strength which eventually led to a sharp recovery and a move back towards the Market Views Figure 2. Price action since the financial year-end has been dollar positive, so the BOJ has not had call to intervene to counter any yen strength. Renewed weakness in the dollar may attract the authorities back into the market but if the Japanese stock market sustains the bull run, and deflationary fears continue to recede, then any intervention is likely to be of reduced magnitude and be used to smooth, rather than halt, yen strength. It will be interesting to see their involvement if the 101.25 lows from late 1999 are tested. The performance of the Nikkei, particularly the inflow of foreign investment, will be decisive for the future path of USD/JPY. While the Nikkei posted a bearish outside week in mid-April, the bull trend remains intact and the longer term moving averages remain supportive for further stock market gains. nated asset. In short, it is a combination of moving averages of varying time periods and with varying lead and lag times. The "cloud" which is the shaded area between two of these averages (plotted with a 26-period lead time) reflects the trend of the market. The weekly USD/JPY chart shows how the market often accelerates on a break of the cloud and that it can also act as important support and resistance. Note the impulsive break down from the head-and-shoulders top through the cloud support in June 2002 and the failure of subsequent rallies, within the descending triangle, at the cloud low. The weekly cloud base is currently within the September gap, which along with the long-term bear trendline from early 2002, is reinforcing this as an area of major resistance. Despite the short-term recovery from the March lows and potentially bullish dollar indications from the dollar index chart, the head-andshoulders pattern remains intact and gives scope for a longerterm move towards the reversal pattern objective at circa 95.50. We would expect the 100-101 area to be a significant interim sticking point on this decline. Ichimoku Kinko Hyo is a Japanese technical system that is worthy of study in this market and indeed in any yen denomi- Kevin Edgeley CFA is executive director and technical analyst at Goldman Sachs September gap. Crucially this move failed to enter, let alone fill, the gap and the market declined again to new lows. The latest rally should also be capped ahead of that major gap area (112.70-113.60). May 2004 THE TECHNICAL ANALYST 7 Market Views BRENT CRUDE by Cliff Green Brent crude prices could come under renewed downward pressure in the shortterm. The longer-term outlook, however, remains very positive. hile the medium-term trend structure for Brent crude is clearly upwards, the past 29 months' bull cycle still looks to be a component of a major consolidation pattern which started back in early 2000. As can be seen in Figure 1 prices are now approaching the upper boundary of this broad trading range with strong resistance anticipated in and around the $34.50-$35.50 region. With oscillators showing the market to be rather overbought, this should add a degree of potency to this anticipated area of supply increasing the chances of a period of correction if not a fresh downward leg within the prevailing sideways pattern. W However, underlying technical studies favour eventual breaks above these historically important levels which would complete an accumulative platform capable of supporting advances towards the 1990 peaks at around $41.00 and possibly a marginal new high with targets of $45.00 clearly readable. uptrend support waiting at $28.00 likely to damage the overall positive tone. This may trigger more serious falls setting values on course to challenge the more important $22.50-$23.00 zone. On the individual delivery months, Figure 2 clearly shows how values are moving higher within the parameters of an upward slanting channel with immediate rally attempts likely to again meet strong resistance towards the upper boundary around the $34.50 region (basis June 2004). This market appears to be increasingly vulnerable to more serious corrective weakness with a fresh test of pivotal support around $32.30 likely in the shorter-term. A decisive breach of this level would trigger falls towards uptrend support waiting in the $30.00-$30.50 region with only a clear and sustained break beneath this likely to damage the medium-term positive outlook and trigger falls closer to the $26.00 area. Immediate corrective pullbacks should uncover support at $30.00 initially with only a clear and sustained break beneath Cliff Green has been a technician since 1971 and was previously a senior technical analyst with Merrill Lynch in London and a partner at Trend Analysis Ltd. He is now an independent consultant specialising in the Commodity Markets. (cliff@cliff-green.com) Figure 1. Figure 2. 8 THE TECHNICAL ANALYST May 2004 MTPredictor TM The software solution for complete trading excellence Designed exclusively to find, assess and manage only the very best trades in stocks, currencies and commodities This is the type of trade MTPredictor can automatically uncover for you…. A Profit of approximately 7x the initial risk required to take the trade, ignoring slippage and commissions, in the UK stock GKN (October 2003) End-of-Day and Real-time programs with automatic routines for: · · · · · · Ideal trades: Find exceptional set-ups with outstanding Risk/Reward prospects Ideal trade size: Control your position size Ideal trade management: Display the exit stop strategy on-screen Ideal trading psychology: Consistent, logical trading, time after time Systematic Elliott Wave software: Avoid the pitfalls of standard Elliott analysis Advanced strategies: Expert trade opportunities and management plans TAKE CONTROL OF YOUR TRADING WITH THE IMMINENT LAUNCH OF THE NEW MTPREDICTOR 4.0 SERIES! MTPredictor Ltd www.mtpredictor.com sales@mtpredictor.com Tel +44 (0) 208 9776191 Market Views MAKING WAVES APPLYING ELLIOTT WAVE THEORY TO THE US DOLLAR, NIKKEI AND FIXED INCOME MARKETS by David Murrin The US Dollar The long-term view on the dollar is interesting. My general view is that the US equity market leads the decline of the dollar by about 12 months, from the 2000 peak to the recent February lows. The February lows are viewed as important and will probably remain in place for the next 12 months or so, allowing a long-term correction to dollar weakness to unfold. Once this is complete somewhere in 2005 we would expect the commencement of a second bear move in the dollar. The overwhelmingly negative sentiment on the dollar matched by massive bearish positions across the market place should always provoke serious questions as to the sustainability of a trend. For a clear picture, it's important to look at a number of Figure 2. in any market that is highly analysed and traded, and is the market's way of adding a degree of uncertainty to the process. That aside, the February lows in the dollar were marked by very short five of five waves, a very clear signal that the market had lost momentum. USD/CHF has now broken its declining trend line at 1.3040 confirming the low and is set to rally back to the 1.41 level in the next three months. The euro however has still to break its trend line at 1.1660, though it seems that this is likely to occur and that we will see a move to the 1.06 level in the next three months. Fixed Income We believe there is a significant change in the relationship between the US and European economies (which are on a secular decline this decade) and the Eastern economies such as China and Japan (which are on a secular rally). In this con- Figure 1. currency pairs. For example, USD/CAD (see Figure 1) shows a very clear five-wave decline from its 2002 highs and the clarity of the internal five-wave structure suggests the January 2004 low was the end of the move. We have since been rallying as part of a correction to the 1.41 target in the A wave. Of further note was the way this pair respected the trend break shown on our chart as the correction unfolded. This was the first pair to show the dollar's decline had finished. The next two pairs of note are USD/CHF and the EUR/USD (Figures 2 and 3). Both of these show a completed five-wave decline, but the image is slightly complicated by a large third wave unfolding with internal corrections of the same magnitude as those of one higher degree. This is now very common 10 THE TECHNICAL ANALYST May 2004 Figure 3. Market Views Figure 4. Figure 6. Figure 5. Figure 7. text, and coupled with the chart in Figure 4, we believe the US T-bonds are declining to the 98 region in the C-wave associated with last year's rapid bear market. However at this stage we still favour the scenario that the move is a big three-wave decline, at the bottom of which sentiment will lean strongly to a sequence of rate rises. Nevertheless, with our view of the decade being one of US deflation, we think rates will stay low and that the end of the C-wave will offer good buying levels. The NIKKEI Meanwhile, in Japan, if we are correct about the secular rally in the fortunes of the Japanese economy then long-term rates are on the rise and we have seen the lows for many years to come. The JGB chart (see Figure 5) shows clear three-wave rallies and five-wave declines that support such a view. Our first target is the 132 region and our basic strategy will be to sell three-wave rallies and buy back five-wave declines until proven otherwise. Consistent with our overall analysis, we are bullish over the long-term for the Japanese stock market. This view is supported by the clear completion of a three-wave decline from the 1989 high to the 2003 low shown in Figure 6. This conclusion is supported by the clear internal count showing wave five of five of big C in March last year. Figure 7 shows the details of the rally with five-wave advances and three-wave corrections, suggesting the market will continue through the 12,000 level to 14,000 in the next few months. It is no surprise that short JGBs and Long NIKKEI are in effect the same trade with some shortterm variance. David Murrin is chief investment officer of Emergent Asset Management Ltd May 2004 THE TECHNICAL ANALYST 11 Techniques ANDREWS' PITCHFORK THE PRICE FAILURE RULE by Gordon DeRoos Those who have studied Dr. Alan H. Andrews' trading techniques in depth know that he taught ways to expect a change in market sentiment, a change that often results in a price move that catches many traders by surprise. During one of his seminars Andrews said, "a lot of traders spend a good deal of their time following the markets to see what prices are doing. I suggest they would be better off if they spent more time observing what prices are not doing." A core Andrews technique that deals directly with what prices are not doing is called the "price failure rule." It comes into play when prices don't reach the median line. Before we look at the technique, let's first consider the broader interpretation of price action vs. the median line. The median line as a price magnet The median line technique is Dr. Andrews' best-known work. It is the basis for the trading tool commonly called "Andrews Pitchfork" that is found on many charting software programs. The primary feature is the high probability that prices will reach a median line and then reverse. This aspect is well known among traders. Less known is that the technique goes a great deal further than that. Figure 1 is a typical example of how the median line acts as a price magnet, drawing prices towards it. The discovery of this phenomenon prompted Dr. Andrews to develop supplemental techniques that would help confirm the outlook of trade positions already on the books, or alert him to a potential shift in market sentiment as prices interacted with the median line. The price failure rule is one of those techniques. 12 THE TECHNICAL ANALYST Figure 1. A, B and C are the three points which determine the shape of the pitchfork. Point A is placed at the end of the previous trend (and is the "handle"), B at the top of the next trend and C at the bottom of the trend (together, the base of the "fork"). The price failure rule To deal with those times when prices change direction before reaching the median line, Dr. Andrews developed a special method called the price failure rule. It is an easy to use, two-step process that prepares the trader for a trend change when new buying or selling interest appears to be surfacing. The rule relates to Dr. Andrews' comment quoted earlier in the article regarding the importance of observing what prices are not doing; i.e. not continuing to press on until the median line is reached. Price failure to reach the median line raises a couple of interesting issues: market sentiment is more than likely changing and it is not May 2004 unusual to see a large countermove take place following a price failure. Confirming a price failure Figure 2 shows prices steadily moving lower after the pitchfork was drawn, well on the way to the median line. An Andrews trader, bearing in mind his observation that prices will reach a median line more often than not, would have had good reason to look for prices to continue the move down to the 15 area. However, that outlook would have been less clear when prices reversed and penetrated the upper parallel line of the pitchfork. That was a warning that a price failure was likely, calling for Hagopian's rule, a trendline adaptation Dr. Andrews Techniques highs. It slopes away from the median line, which is the preferred arrangement according to Andrews. In the example, a buy signal was given when prices broke through the Hagopian line, completing the setup for the price failure rule. Traders looking for additional trade signal confirmation ought to find that their favorite technical indicators would merge quite well with this technique. Oscillator divergence is one approach that can tie in effectively. Volume analysis is another. The range of indicators is considerable, and while each can be helpful to some extent, the real power comes from the clues generated by the price movement itself as it interacts with the median line. The test is to recognize those clues, and that is where the price failure rule can lend a hand. Figure 2. Figure 3. named after one of his early course members. when prices cross a trendline they were moving along before reversing." Hagopian's rule In figure 3, the pitchfork median line is "the line at which probability indicates such a reversal could start." The "trendline they were moving along before reversing" is the Hagopian line. The Hagopian line drawn in Figure 3 is a downtrend line drawn across two previous Here's how he described the rule in his original course: "When prices reverse trend before reaching a line at which probability indicates such a reversal could start, proper action may be taken in buying or selling May 2004 A question often arises regarding pivot selection for the pitchfork. Users wonder if there is a way to determine which set of three pivots (e.g. A, B and C in Figure 1) would be the best to use in any given situation. Dr. Andrews addressed that very question during one of his seminars. Here is how he responded: "Usually it seems best to start with the most recent three alternate pivots of the time frame you're interested in. That will give you the current outlook. But don't stop there, because any three alternate pivots can be used, and no matter which set is chosen, each resulting pitchfork will add something to the outlook as it tells its own story." The price failure rule is just one part of the pitchfork story. Gordon DeRoos is an ex-US Army officer (24 years) and commodity broker (18 years). Although retired, he has been teaching Dr. Alan H. Andrews' action/reaction trading methods for the last seven years. www.pitchforkprimer.com THE TECHNICAL ANALYST 13 Techniques THE FOUR-WEEK RULE by Alex Martin The Four-Week Rule is a basic method that may not appear glamorous in the company of Fibonacci numbers and Japanese candlesticks. Yet despite its simplicity and its obvious shortcomings as a trend-following system (it works well in up or downtrends, but not sideways trends), in the right hands it can be a powerful and profitable tool. The charting rules The trading rules The price channel generates the following signals (see Figure 1): 1. When the price is at its highest in a four week period, buy long and cover short positions. 2. When the price falls below the lows of a four week period, sell short and liquidate long positions. 3. This last rule only applies to future traders, which is “to roll forward, if necessary, into the next contract on the last day of the month prior to expiration. 1. buy signals are produced when the price closes above the upper band of the price channel. 2. sell signals are generated when the price closes below the lower band of the price channel. Box 1. The rules The rules according to Donchian Developed by Richard Donchian in the early 1970s for commodities and futures (it is also known as the "price channel" or "Donchian channels") The Four-week Rule is a method that includes a set of charting rules that are generated from the price channel as well as a set of trading rules. The mistake that is often made it to use the price channels without the trading rules. But it is the application of both sets of rules that make the method effective. (See Box 1) As you can see from Figure 2, trend following systems react to movements rather than attempting to predict them. The trend breaks before the price closes below the lower band of the price channel. When interpreting the price channel on charts, buy signals are generated when the price channel has closed above the upper band as shown in Figure 3. The price channel tends to create quite a few signals during the course of the up trend. For those who use technical stock screeners, use a screen with a rising close condition where the price closes higher than the day before for three days, as well as a price that closes above the upper band. When we include a three-day rising close as well as a 14 THE TECHNICAL ANALYST price channel breakout, the number of false signals is reduced as can be seen in Figure 4 below. The stock used in all of the chart illustrations was found using the following stock screen: price-channel buy, where the price penetrates the upper band, as well as the condition that the close for the last three days was higher than the day before it. (The reverse does not apply during sell conditions, three consecutive days down is not the best pattern to wait for.) Donchian, in conjunction with the Fourweek Rule, to create combined signals that help you determine if the price has really generated a strong trend. Note: The rules in these two systems do not conflict with one another. The 5- and 20-day moving averages method The 5- and 20-day moving averages method includes several general and supplemental rules. These rules were initially intended for currency markets but can also be used to analyze stocks. Complimenting the Four-week Rule The method consists of the following rules: So what can you do to increase the effectiveness of the Four-week Rule so that you don't miss opportunities due to the lagging indicators? And equally as important, how can you ensure that you aren't going to lose money in a volatile or sideways-trending market due to false signals? One way to add certainty to the Four-week Rule is to use complimentary indicators or methods to generate additional signals that provide a warning or confirmation. For example, you can use another trend-following system, the 5- and 20-day Moving Averages Method, also developed by May 2004 Basic rule A: Act on all closes that cross the 20-day moving average by an amount exceeding by one full unit the maximum penetration in the same direction of any previous closing when the closing was on the same side of the moving average. Basic rule B: Act on all closes that cross the 20-day moving average and close one full unit beyond the previous 25 closes. Basic rule C: Within the first 20 days after the first day of a crossing that leads to a trading signal, reverse on any close that crosses the 20-day moving average and Techniques Figure 1. Figure 2. Figure 3. May 2004 THE TECHNICAL ANALYST 15 Techniques Figure 4. Figure 5. Figure 6. 16 THE TECHNICAL ANALYST May 2004 Techniques Summary: Getting the Four-week Rule to work 1. Apply both sets of rules (trading and charting) 2. Buy and sell strictly according to the rules 3. Compensate for its shortcomings through complimentary analysis closes one full unit beyond the previous 15 closes. Basic Rule D: Sensitive five-day moving average rules for closing out positions and for reinstating position in the direction of the 20-day moving average are: 1. Close out positions when the currency closes below the 5-day moving average for long positions and above the 5-day moving average for short positions, by at least one full unit more than the greater of either the previous penetration on the same side of the 5-day moving average, or the maximum point of any penetration within the preceding 25 trading days. Should the range between the closing price in the opposite direction to the Rule D closeout signal be greater than the prior 15 days than the range from the 20-day moving average in either direction within 60 previous sessions, do not act on Rule D closeout signals unless the penetration of the 5-day moving aver- age exceeds by one unit the maximum range both above and below the 5-day moving average during the preceding 25 sessions. Figure 5 generated by the 5- and 20-day method, we can see that signals are generated earlier on in the trend than the price channel shown in Figure 6. 2. Reinstate positions in the direction of the basic trend (a) when the conditions in paragraph 1 are achieved, (b) If a new Rule A basic trend is given, or (c) if new Rule B and Rule C signals in the direction of the basic trend are given by closing in a new low or new high ground. To better interpret the signals generated by the 5- and 20-day method, it is advisable to include an MA cross system such as Japanese Crosses. 3. Penetrations of two units or less do not count as points to be exceeded by Rule D unless at least two consecutive closes were on the side of the penetration when the point to be exceeded was set up. (Richard Donchian, December 1974 Futures article), as quoted by Cornelius Luca in Technical Analysis Applications in the Global Currency Markets, 1997. When we look at the charting signals in May 2004 Combining the 5- and 20- day moving average cross system with the Four-week Rule can help to confirm information about the potential trend change. These modifications are not intended to replace basic trend-following techniques, but to provide more information about the trend when price channel signals are generated. Alex Martin is Chief Technical Officer at ChartFilter. www.chartfilter.com THE TECHNICAL ANALYST 17 Techniques USING THE MCCLELLAN OSCILLATOR by Tom McClellan In the last issue of The Technical Analyst, Tom McClellan gave an introduction to The McClellan Oscillator. In this article, Tom takes us through some of the more advanced ways in which it can be used to help forecast market direction. T he McClellan Oscillator is a tool which measures the acceleration in daily Advance-Decline (A-D) statistics by smoothing these numbers with two different exponential moving averages, then finding the difference between them. The Oscillator's most basic indication is its position relative to the zero line, which is the Oscillator's neutral level. The market is nearly always accelerating or decelerating, in one direction or the other, and rarely has a neutral acceleration condition. A positive Oscillator reading is an indication of upward acceleration, while a negative reading is a sign of downward acceleration. But there is much more that the Oscillator has to tell us. Overbought/Oversold When the McClellan Oscillator reaches an extreme level, either high or low, it indicates an extended condition for the market. In this respect, it is like many other overbought/oversold indicators, and like the others, an extended McClellan Oscillator reading is no guarantee that the extended market condition has to end right away. Oversold readings on the McClellan Oscillator offer us some additional insights when interpreted properly. First of all, deeply negative readings tend to indicate the conclusion of a down move, whereas extremely high readings tend to show initi- 18 THE TECHNICAL ANALYST Figure 1. ation of a strong new up move. Also, a deeply negative Oscillator reading which comes along after a long period of quiet is a harbinger of more trouble to come. We see great examples of all of these principles in Figure 1, showing the Oscillator in 1998 and 1999. Point 1 in this chart was a deeply negative reading (-271) which came after a long quiet period. As such, it gave us warning of the weakness that arrived later in 1998 when the "Asian Contagion" hit the markets. Points 2 and 3 in this chart were also very low, but rather than being indicative of future weakness to come they were the fulfillment of the weakness forecast by point 1. They also marked the end points of strong down moves, with prices either reversing or at least moving sideways for a while as the bears gathered more strength. For several months prior to point 3, there had been no strong up moves accompanied by very high Oscillator readings. The postings above +200 beginning in September 1998 were a sign that the bulls were going to be rushing back in and that they had enough money to push prices higher for a sustained period of time. These high post- May 2004 ings differed from the very low readings because low readings are indicative of the conclusion of a down move, whereas the high readings tend to occur at the very beginning of a strong up move. We almost never see the price move higher on the highest Oscillator reading. So when one sees a very high reading, it may be a sign that a brief pullback is needed, but it is also a sign that higher prices should be expected following that pullback. In Figure 2, we see a great example of a conclusive indication from a very oversold Oscillator reading. This bottom was not followed by any strong positive readings for a long time and the result was a choppy, range-bound period for stock prices. Some sources on technical indicators will prescribe specific Oscillator values that represent overbought and oversold levels, but we discourage people from following such guidelines. A wide variety of factors can affect the amplitudes of Oscillator moves at various times, including market volatility, the strength of price moves, and changes in the number of issues traded on the exchange. So an Oscillator value that might Techniques Divergences To the extent that the Oscillator's movements diverge from price action, it can signal an impending change in direction for prices. This is where it helps to understand that the Oscillator serves as a measure of acceleration for the market breadth statistics. Measuring the acceleration can be helpful to signal an impending change in trend direction. Figure 2. indicate an extreme condition during one period may only be a routine high or low during another period. One way to adjust for this is to calculate a "Ratio-Adjusted" McClellan Oscillator. Using Ratio-Adjusted McClellan Oscillator values does indeed adjust for the changing number of stocks on the exchange but it does not adjust for other factors such as fluctuating market volatility or changes in the diversity of issues represented which may produce greater or lesser Oscillator swings. For periods of less than 2 years, we believe that it is fine to use the conventional McClellan Oscillator. Rather than focusing on the specific numerical value, an examination of the chart pattern will give much more information about what the Oscillator has to tell us. Certain chart structures and behavior can be enormously revealing. Figure 3 shows several divergences between the price action in the NYSE Composite Index and the McClellan Oscillator. Notice that these divergences tend to occur more often at tops than at bottoms, which is due in part to the way that the US stock market tends to have more rounded tops and exhaustive (spike) bottoms. This is not to say that no divergent bottoms can be found, just that divergent tops are much more frequently seen. Congestion Zones A congestion occurs when the Oscillator fluctuates by very small increments over several days. One or two days of small changes is not enough, it has to be a sustained period. The Oscillator value area where a congestion occurs (called the congestion zone) usually forms above the zero line. We seldom see them form at extended negative values. The basic rule to remember is that a congestion zone is something to drop out of. Figure 4 illustrates a few examples of congestion zones. The common characteristics of each are that they show several days of postings with the Oscillator in a relatively small range. Once the Oscillator breaks down out of that range the market begins to decline sharply. A couple of these examples even have the congestion zone forming Figure 3. May 2004 THE TECHNICAL ANALYST 19 Techniques form, although that weakness may not be manifesting itself during the period that the simple structure is formed. For example, the Oscillator could be chopping up and down below zero, implying that the bears are strong and then it might move briefly above zero as the bulls try to regain control. But if (in this example) the Oscillator moves straight up through zero and then turns around and moves straight back down through zero again, it is a sign that the bulls do not really have the strength to carry on their mission for more than a brief period and the bulls cede control back to the bears. Figure 4. at or below zero, but the result was still a drop down out of the congestion zone. Looking at one day's Oscillator value would not convey this information; it takes a chart, and someone to interpret that chart, to notice behaviour like congestion zones and divergences developing. Complex Versus Simple Structures When the Oscillator moves up and down over a period of days on one side of the zero line, we call that a "complex structure". Complexity of a structure implies strength for the side (of zero) upon which it forms, whether positive or negative. A "simple structure" is one in which the Oscillator crosses zero in one direction in a move lasting from one day up to a few days, and then turns around and heads directly in the opposite direction without forming any complex structure. Simple structures imply weakness for the side upon which they Figure 5 shows a few examples of each type of structure. Where a complex structure forms, it implies more strength to come for that side of the market corresponding to the side of the zero line where the structure formed, i.e. complexity above zero is bullish, and below zero is bearish. That strength may be temporarily interrupted while the other side tries to exert its influence, but where complexity has formed we have the expectation that more strength will be manifested in that direction. Often we will see trending price moves, either upward or downward, made up of a succession of complex structures that are interrupted only briefly by simple structures. When such a succession of complex structures gives way to a simple structure, it can mean that the trending side of the market is ready to give up control for a while, and the opportunity is there for the other side to pick up the ball. Sometimes, neither side will form a complex structure, meaning that both the bulls and the bears are equally hesitant to take charge. Oscillator Trendlines One interesting feature of the Oscillator is that it forms trendlines just like price charts Figure 5. 20 THE TECHNICAL ANALYST May 2004 Techniques homogeneous way. In a narrow sector like gold mining stocks, for example, it is typical to see all of them go up one day and then all go down the next day. Other industry groups and sectors show this same effect to a greater or lesser degree. By narrowing the focus to small groups like this, we end up losing the key indication given to us by looking at breadth statistics. By examining the behavior of a diverse collection of stocks, we can see if there is a different indication from what we see in prices alone. Figure 6. do, but the Oscillator trendlines will usually be broken before the corresponding price trendlines are broken. Figure 6 shows a few examples of Oscillator trendlines, and in each case the breaking of the trendline signaled a reversal of the prevailing short-term trend. And also in each case, the trendline break in the Oscillator preceded the trendline break on the equivalent price chart. advancing and declining issues, and so it does not exist as an intraday indicator. However, it is possible to take the intraday values for the number of advances and declines and calculate a "what if" value for the Oscillator that assumes those A-D values are the closing ones. Additional Points In Conclusion It is also possible to use other data to calculate McClellan Oscillators. We calculate and employ in our analysis breadth versions of the Oscillator which are derived from A-D data on the Nasdaq market, the stocks in the Nasdaq 100 Index, the 30 stocks in the Dow Jones Industrial Average, the corporate bond market, plus a subset of the NYSE breadth data for the "Common Only" stocks (filtering out preferred stocks, rights, warrants, and closed end funds). It is even possible to create a McClellan Oscillator out of any other breadth statistics you might think of such as a subset of the market that includes all of the stocks in a particular sector. The McClellan Oscillator is based on the daily closing values for the NYSE's totals of The problem with subset breadth statistics like this is that they tend to all behave in a It is important to be careful when drawing such lines, and more importantly, when drawing conclusions from them. Generally speaking, trendlines which span longer periods become less meaningful, and it is better practice to stick to the steeper trendlines which span 3-6 weeks. As with price trendlines, it is not unusual for the Oscillator to break out above a downtrend line and then go back down to test the top of that line before continuing higher. May 2004 Breadth statistics are valuable because they give some of the best indications about the health of the liquidity that is available to the stock market. A small amount of money can be employed to make a handful of stocks go up or down and if they are the right stocks then even the major market indices can be moved. But to affect the breadth numbers, which measure all of the stocks on the exchange, requires major changes in the liquidity picture. The available money has to be so plentiful that it can be spread far and wide in order to make the majority of stocks close higher, and especially so in order for the market to show positive breadth for several days. By measuring the acceleration in the breadth statistics, which is what the McClellan Oscillator does, one can gain important insights about impending trend direction changes for prices. Tom McClellan is the editor of The McClellan Market Report. He is the son of Sherman and Marian McClellan who created the McClellan Oscillator in 1969. www.mcoscillator.com THE TECHNICAL ANALYST 21 Techniques VOLUME SPIKES AND INDEX REVERSALS by Steffen Norgren and Andrew von Stuermer In Volume Analytics, volume data plays more than just a minor supporting role - it is the principal variable used to forecast reversals in stock exchange indices. T he extensive body of knowledge associated with volume analytics has given rise to a view of the markets that is proven, time-tested, highly consistent, and profitable. Its basic premise is that volume and index behaviors are closely interrelated and that the trading patterns of an index can be predicted, or at least anticipated, from a proper understanding of the unfolding volume patterns. The technique provides the trader with an elegant way of monitoring and analyzing the volume behaviour of a particular index and allows him or her to heed one of the golden rules of trading, "Do not play against the market." But why apply volume analytics to indexes and exchanges, rather than to individual stocks? Indexes best describe the mood of the market as a whole. Regardless of what you trade, a particular index or sub-index, stocks, options, futures, most of these trading vehicles tend to move in concert with the broad market. As a rule, the market dictates the direction of a particular security, never the other way around. It therefore makes sense to get a good grasp on what is happening at the index or stock exchange level, and we have found volume analytics to be an excellent vehicle to make that determination. Terminology Every trader is familiar with moving averages of securities prices, perhaps the most frequently used technical indicator. We simply apply the concept to volume, rather than to price, and plot Volume Moving 22 THE TECHNICAL ANALYST Averages (VMA) that range in duration from as short as a few minutes to as long as several months. However, there is a slight twist to this. Volume activity typically follows certain predictable patterns throughout the trading day, with high levels prevalent immediately after the open, lower values around noon, and increased levels once more toward the close. We call this pattern the "time factor". Unfortunately, the time factor provides a rather distorted picture of the daily volume activity. It makes it difficult to differentiate those volume events, which are truly significant, from those that are simply part of the normal daily fluctuations. We have solved the time factor issue by normalizing volume data before charting it. Charting normalized volume allows a much clearer determination of whether or not volume levels are spiking above normal levels, an aspect that is at the core of our methodology. We are particularly interested in the appearance of large peaks ("spikes") in the VMA known as VMA spikes - and how an index reacts when they are generated. Sudden VMA surges are indicative of bursts of significant buying or selling activity. As such spikes occur, we determine whether the index is moving up or down at that time. If the direction is up, we call the associated volume surge a resistive VMA spike; if the index direction is down, we label the spike a supportive VMA spike. In the absence of distinct volume spikes, we still call any volume generated as the index is moving up resistive volume, and as it moves down, supportive volume. Basic principles The most basic premise of volume analytics is we can always anticipate an index will May 2004 react to (significant) volume spikes - as a rule, resistive volume spikes will force a downward move in the index; supportive volume spikes will generate upward index momentum. This basic assertion must be qualified by two key questions: 1. What determines the extent and characteristics of an anticipated move: Will it be short-lived or have staying power over the mid- to long-term? Will it be gradual or sudden? 2. What determines when an anticipated move will most likely occur: Will it happen immediately or will there be a certain time lag (a "delayed volume reaction")? Our research shows the answers to these questions vary considerably, depending on (a) the general market context, and (b) the technical characteristics of the actual volume spike(s) being analyzed. Therefore, in order to get the most value from volume analytics, it must always be placed in the proper context: Market context: Where in the larger market picture do supportive / resistive VMA spikes appear: During short-term pullbacks within a larger uptrend? As part of shortterm upside corrections within a larger downtrend? At the presumed end of a weakening long-term trend? At the beginning of a new trend or somewhere in its middle? During distinct trend runs or in markets with choppy sideways trading action (i.e., in support / resistance corridors)? Technical considerations: When analyzing a VMA spike, consider its magnitude, both vertically (the height of a thrust) and horizontally (its width or breadth). Comparatively larger and/or wider spikes obviously carry more weight. Caution must be exercised when analyzing volume spikes Techniques on a short time frame, as their potential impacts on mid- or long-term trends can easily be misjudged. A noteworthy spike appearing on a 5-minute chart could well affect an index in the short-term, but it may not necessarily have much of an impact on the prevailing long-term trend. Practical considerations We suggest using only real-time intraday index charts and applying volume analytics to highly liquid indexes that reflect not only the US economy, but also the world economy, such as the NASDAQ 100, the S&P500, and the Russell 3000. Place volume spikes in a broader market context by consulting several charts with different settings; we suggest a chart range from intraday to at least 2-years. Compare current volume events with those of the past. Finally, it is essential to use only volume data that has been normalized, so that the spikes you observe are not distorted by the time factor. Figure 1. Chart examples Index values will always (sometimes immediately, sometimes with a delay) react to volume spikes, and the greater the magnitude of a spike (or series of spikes), the stronger the ensuing reaction. (The many complex reasons why sudden volume surges take place are beyond the scope of this article). For example, at the end of 2002/beginning of 2003 the long market downtrend in the S&P 500 finally reversed and switched to a steady up-trend (Figure 1). A volume analysis chart provides us with fresh insight. Three volume spikes (two large ones in July and October 2002, as well as a smaller VMA peak in February 2003) correspond with a distinct long-term trend change for Figure 2. May 2004 THE TECHNICAL ANALYST 23 Techniques “INDEX VALUES WILL ALWAYS REACT TO VOLUME SPIKES.” October 10, 2002 and that the January 2003 move to retest the recent lows was just a mid-term correction of the new up-trend. Figure 2 (a 30-day chart) clearly shows how each volume spike was followed by an index reversal, whereas Figure 3 shows that the relationship between volume spikes and index reversals applies equally well to the short-term. Steffen L. Norgren and Andrew von Stuermer, Highlight Investment Group. Figure 3. the S&P 500. You could argue it was prompted by the outbreak of the war in Iraq. However, our volume analysis demonstrates the index was ready to move up, 24 THE TECHNICAL ANALYST given the large buildup of supportive volume, as evidenced by the two very significant volume spikes. It could also be argued that the new uptrend actually began on May 2004 We would like to acknowledge MarketVolume for their analytical support and for the chart material presented in this article. www.MarketVolume.com Techniques THE INVERSE FISHER TRANSFORM by John Ehlers The purpose of technical indicators is to help time your trading decisions. Hopefully, the signals are clear and unequivocal. However, more often than not your decision to pull the trigger is accompanied by crossing your fingers. In this article, I explain a way of making oscillator-type indicators give clear black-and-white signals of when to buy or sell. I n the past, I have noted that the probability distribution function (PDF) of prices and indicators do not have a Gaussian probability distribution. A Gaussian PDF is the familiar bell-shaped curve where the long "tails" mean that wide deviations from the mean occur with relatively low probability. The Fisher Transform can be applied to almost any normalized data set to make the resulting PDF nearly Gaussian, with the result that the turning points are sharply peaked and easy to identify. The Fisher Transform is defined by the equation 1) e2 y − 1 x = 2y e +1 The transfer response of the Inverse Fisher Transform is shown in Figure 1 (with x and y reversed to correspond to the usual definitions of input and output). If the input falls between -0.5 and +0.5, the output is nearly the same as the input. For larger absolute values (say, larger than 2), the output is compressed to be no larger than 26 unity. The result of using the Inverse Fisher Transform is that the output has a very high probability of being either +1 or -1. This bipolar probability distribution makes the Inverse Fisher Transform ideal for generating an indicator that provides clear buy and sell signals. One of the more popular technical indicators is a Stochastic RSI. This indicator starts by taking an RSI of price. Then, a Stochastic of that RSI is taken to limit the output to between 0 and 100. Translating and scaling, this is mathematically the same as varying between -1 and +1. ⎛1+ x ⎞ y = 0.5 * ln⎜ ⎟ ⎝1− x ⎠ Whereas the Fisher Transform is expansive, the Inverse Fisher Transform is compressive. The Inverse Fisher Transform is found by solving equation 1 for x in terms of y. The Inverse Fisher Transform is: 2) Figure 1. Transfer response of the Inverse Fisher Transform compresses the output to between -1 and +1 THE TECHNICAL ANALYST Vars: IFish(0); Value1= .1*(RSI(Close, 5)-50); Value2= WAverage(Value1,9); IFish=(ExpValue(2*Value2)-1)/(ExpValue(2*Value2)+1); Plot1(IFish, "IFish"); Plot2(0.5, "Sell Ref"); Plot3( - 0.5, "Buy Ref"); Figure 2. EasyLanguage Code to Take the Inverse Fisher Transform of an RSI May 2004 Techniques Figure 3. Inverse Fisher RSI But there is no reason to bludgeon the RSI with a blunt instrument like a Stochastic. Instead of picking an observation length that is guaranteed to drive the Stochastic to saturation, you can finesse the indicator PDF using the Inverse Fisher Transform. The Easy Language code to do this is given in Figure 2. The 5 bar RSI varies from a minimum of 0 and a maximum of 100. The 5 bar length of the RSI was selected to provide good operation when applied to many price series. The RSI period is certainly available for optimization. By subtracting 50, the RSI indicator is translated to range from -50 to +50. Then, multiplying by 0.1 reduces the range to be between -5 and +5 for Value1. This is just the kind of maximum swing suited to the Inverse Fisher Transform. I used a 9 bar weighted moving average to compute Value2 to smooth Value1 and ultimately remove some spurious trading signals. There is no magic in this average. It could have fewer bars to have less lag or it could be an Exponential Moving Average. Its function is just to be a smoother. The transform is calculated as the variable IFish and then plotted. The code also plots output reference lines at -0.5 and +0.5. The transformed RSI is applied to the Exchange Traded Fund (ETF) QQQ in Figure 3. The trading rules are simple. Buy when the indicator crosses over -0.5 or crosses over +0.5 (if it has not previously May 2004 crossed over -0.5). Sell short when the indicator crosses under +0.5 or crosses under 0.5 (if it has not previously crossed under +0.5). The trading signals are not only clear and unequivocal, but they are also profitable. The Inverse Fisher Transform can be applied with equal success to virtually all oscillator-type indicators and should provide greater confidence in deciding when to enter and exit trades. John Ehlers is an electrical engineer and has been a private trader since 1978. www.mesasystems.com THE TECHNICAL ANALYST 27 Techniques ASTRONOMY AND THE DOW JONES by Larry Pesavento Published in 1948, Donald Bradley's 'Stock Market Predictions - the planetary barometer and how to use it' was a 50 page booklet that sold for four dollars. It received little attention and it would be forty years before Larry Pesavento and Arch Crawford began publishing yearly forecasts based upon Bradley's formulas. The Technical Analyst takes a step into the unknown and asks Larry Pesavento to explain what it's all about. T he Bradley model gives a chart (called a siderograph) based on the classic Ptolemic harmonic angles between any two planets. Although the Bradley model can sometimes "predict" the exact highs and lows of the stock market it is far from infallible. However, the key turning dates in the model are very useful. These can be used for locating tops and bottoms in the Dow Jones as well as other actively traded markets. Figure 1. What the Bradley model does do is make the technical analyst aware that there must be some correlation of prices to various astrological planetary harmonics. But Bradley warns, "At no time must the reader gain the impression that a siderograph, as such, is a prediction of what the stock market will actually do. Nevertheless, observations prove that basic reversals in collective attitudes clearly predicted by the line are inevitably mirrored in stock averages." It is my opinion that the Bradley model should be used in conjunction with other technical tools such as pattern recognition and wave ratio analysis. 28 THE TECHNICAL ANALYST Figure 2. May 2004 Techniques “OBSERVATIONS PROVE THAT BASIC REVERSALS IN COLLECTIVE ATTITUDES CLEARLY PREDICTED BY THE LINE ARE INEVITABLY MIRRORED IN STOCK AVERAGES.” Notice the four charts using the Bradley model overlay as a cycle tool for determining future price swings. Figure 1 is a current Bradley model for 2004. Figure 2 illustrates the model’s results for 2002/2003 and shows that correlations between the actual stock prices and the Bradley model have been quite accurate. Figure 3. Next we overlay the Bradley model over the crude oil future (Figure 3) and gold future chart (Figure 4). There is clearly some correlation in price to astrology. I checked these correlations in the Bradley model from 1876 to the present and it consistently produces results above 70%. Not too bad for a model that can be produced 100 years or more in advance. Larry Pesavento is the author of seven books on trading and is currently a private trader for a large hedge fund. Charts provided by www.ensignsoftware.com Figure 4. The Technical Analyst apologises for printing the wrong charts in the article "Fibonacci and harmonicity - a personal view" in the April issue. Please note the correct charts are available via e-mail (in PDF format) from Jim Kane (jim@kanetrading.com). May 2004 THE TECHNICAL ANALYST 29 Interview THE TECHNICAL ANALYST TALKS TO…. Ralph Acampora Ralph Acampora is managing director and the director of technical analysis for Prudential Equity Group. Ralph has taught technical analysis at the New York Institute of Finance since 1970 and is a Chartered Market Technician (CMT). TTA: You are well known as a founding member of the Market Technicians Association. What was your motivation for setting this up? RA: When I started working in the markets in New York most brokerage houses and major financial institutions in Wall Street had a technical analyst who spent a major part of his day analysing charts. Even then, technical analysis was an established subject but there was very little communication between market analysts. They simply didn't talk to each other. This was largely because there was a lack of any formal structure of communication for analysts. At the time, I had an analyst friend called John Brooks and together we decided to establish an association for analysts where we could meet on a regular basis and discuss our subject. This is how the MTA came about. TTA: Despite the ubiquity of technical analysis in financial institutions, most houses still appear to devote relatively few resources to this area of analysis compared to the large number of economists and fundamental analysts generally employed. Why do you think this continues to be the case in the major financial centres across the world? RA: Technical analysis still suffers to some extent with a credibility problem among heads of the institutions to which you refer. This is a perennial battle for me and has been since the start of my career. In my view, the value and legitimacy of technical analysis has been proved again and again going back to the stock market crash of the twenties. However, fundamental analysis still reigns supreme among the banking establishment. I think the reason this attitude persists is because of the approach to financial analysis propagated by universities and business schools in the US. Postgraduate courses such as MBAs have traditionally 30 THE TECHNICAL ANALYST April 2004 devoted almost no time to technical analysis with preference instead being given to fundamental analysis. For example, share valuations using traditional mathematical methods still dominate rather than looking at a chart to establish if a particular share is overbought or oversold. I really believe that a sea change in academic circles towards technical analysis is required before the hierarchy of our banks and brokerage houses attach more importance to TA. Furthermore, in our academic institutions the random walk theory still predominates as a method of describing the long-term path of financial markets, whether they be stocks, currencies or bonds. This theory has a history of acceptance within the academic community and is somewhat revered as a valid theoretical model. It is a moot point where exactly technical analysis stands in relation to this theory but there are fundamental divergences in the two methods that have established them as opposing views of market determinants. TTA: Is there any evidence that this situation is beginning to change, at least as far as academia is concerned? RA: I'm very pleased to report that things have begun to change, but slowly. There is now a wealth of research into technical analysis and charting methods emerging from universities across the globe. The scepticism within the academic community towards the subject that has existed for so long is at last beginning to change as academics' own research and testing of established techniques used by analysts and traders have been shown to be empirically robust. I'm pleased to report that Andrew Lo at MIT has shown interest recently in establishing a chair for technical analysis at the school. I'm confident that the prejudice against technical analysis within the academic community will continue to decline but it won't happen overnight. Interview TTA: Do you think the failure of fundamental analysis to anticipate the crash of 2001 has done much to boost the profile of technical analysis, especially as so many TA indicators and signals were strongly bearish before the crash? RA: Undoubtedly, but it should be remembered that this has happened before. In 1929, the traders who made money from the crash were those relying on charting methods and got out before the fall. However, the small analyst community failed to take advantage of this in order to raise the profile of the subject and so the advantage was lost for another 30 years or so. However, many of the most influential books on technical analysis and new charting techniques emerged in the 1930s as technicians hurried to put their proven techniques that allowed them to avoid the crash into print. TTA: Are you still actively involved in the activities of the MTA? RA: My goal at the moment is to get those who hold the MTA qualification (CMT) exempted from taking the CFA qualification. This is currently a big issue among analysts on Wall Street, many of whom face the prospect of taking new exams as SEC regulations have changed. From a personal point of view, I don't want to have to start revising for examinations at age 62 after more than 30 years in the market. Economists and strategists are exempted even though they have no formal trade qualification. There is an injustice here that stems from the lack of acceptance of technical analysis within the US financial establishment. If this exemption is something that I manage to achieve I'll look forward to becoming Saint Acampora among the TA's on Wall Street! TTA: Has the use of technical analysis changed in the US over the last 10 years? RA: Technical analysis has enjoyed a greater profile in recent years as the private investor and day-trader community has increased in size. It must be said that television has played a crucial role in increasing the exposure of the subject. Charts now feature regularly on news bulletins and experts such as John Murphy and John Bollinger are now to be seen regularly on our screens giving their commentary on the markets. As such, technical analysis has succeeded in becoming part of mainstream financial news reports. TTA: Does TA remain more popular in the US than in Europe or Asia? RA: No, I'm not convinced of this although the use of TA is mixed across Europe. I am often asked to give talks in various European cities and in some countries the use of technical analysis among both institutions and private investors is as widespread as in the US. Switzerland and Ireland stand out as being enthusiastic TA followers. When I go to Zurich they can't find a hotel large enough to hold the attendees but in London there is almost indifference towards such talks. On the other hand, perhaps they just don't like me in the UK! TTA: In your book " The Fourth Mega-Market" you predicted the Dow would reach 20,000 by 2011. Do you still hold to this view? RA: The book was written in 2000 near the top of the market. At the time, my view was considered by some to be a very conservative outlook in terms of its relatively small annual return. Other forecasts and books from the same period were looking at 36,000 and above for the Dow. However, despite the crash I still hold to my original view but don't expect the market to enjoy an uninterrupted rally to this level. I still expect a long period of very sloppy activity over the forthcoming years and a fall back towards the 7000 level before we reach 20,000. TTA: Have you seen any recent developments in technical analysis that have attracted your attention? RA: Not so much in new developments but more in terms of what is being done with established techniques. I'm thinking in particular of the research that is being done with backtesting and the rigorous studies into pattern recognition. I feel that this work by academics and market professionals is helping to justify the last 40 years of my life! In the 65 years since the Great Depression we are still playing around to get the subject accepted. Therefore, any good research that validates the subject is still very much welcomed. Correction: In the April issue The Technical Analyst said that Anne Whitby is vice-chairman of 4CAST. This is incorrect - Anne Whitby is vice-chairman of the Society of Technical Analysts, not 4CAST. May 2004 THE TECHNICAL ANALYST 31 Subject Matters MONDAY BLUES AND SUNNY FRIDAYS IN THE ASIAN STOCK MARKETS? by Professor Wing-Keung WONG and Nee Tat WONG Do stock markets in Asia suffer from Monday blues and sunny Fridays, or what is more commonly known as the day-of-the-week effect? Apparently yes. In agreement with previous studies in the US and elsewhere (including Asia), we find that the mean return on Monday is indeed negative, and the mean return on Friday is positive and generally the highest. Y et despite the mounting studies on the day-of-the-week effect, researchers have not been able to explain the causes conclusively. In this study, we attempt to shed some light on the mysterious day-of-the-week effect by examining whether the Monday (and Friday) returns are concentrated in any partic- 32 THE TECHNICAL ANALYST ular week(s) of the month and whether the low-return Monday is related to the (preceding) Friday returns, as in the US. Day-of-the-week effect Using daily stock index returns from 1986 to 2002, we find a cyclical pattern of stock returns in the five Asian markets that we studied (see box "The data"). Consistent with the studies in the US and other countries, the mean returns are negative on Monday and highest on Friday. To substantiate the evidence for the day-of-the-week effect, an appropriate statistical test (the Ftest, which is the ratio of two chi-square tests) is used and results show that the F-statistics are significant for all the markets in the full period 1986-2002. However, sub-period analysis shows that the values of the F-statistics decline significantly May 2004 The data Sample: Daily stock index returns from 2 January 1986 to 31 December 2002 1st sub-period: 1986-1994 2nd sub-period: 1995-2002 Daily returns (Rit) are calculated as: Rit = (Pit - Pit-1) / Pit where Pit and Pit-1 are the closing values of stock index i on days t and t-1 respectively. Indices used: the Hang Seng Index (Hong Kong), the KLSE Industrial and Commercial Index (Malaysia), Manila Commercial and Industrial Index (Philippines), Straits Times Index (Singapore) and the SET Index (Thailand). Box 1. from the first sub-period (1986-1994) to the second sub-period (1995-2002) for most of the markets. For Hong Kong and Malaysia, the F-statistics turn insignificant in the second sub-period 1995-2002. These results suggest Subject Matters “SELLING PRESSURE FROM INVESTORS IS SUBSTANTIALLY HIGHER FOLLOWING BAD NEWS ON THE PREVIOUS FRIDAY.” the day-of-the-week effect has generally diminished in the Asian markets, and in some cases disappeared. the Friday returns across the weeks. Although Friday returns are generally positive across all the weeks, they are not significantly positive in any particular week. Monday effect In testing for the Monday effect (and Friday effect), we divide each month into five calendar weeks. The first week of the month is defined as the week that contains the first trading day of the month. We find no significant difference in the Monday returns across the different weeks. This is in contrast to the recent studies in the US, which show that the Monday effect is concentrated in the last two weeks of a month. Friday effect Relationship between Monday effect and Friday effect Monday returns tend to follow preceding Friday returns. In particular, Monday returns are significantly positive (negative) when previous Friday returns are positive (negative). Thus, it seems that the selling pressure from investors is substantially higher following bad news on the previous Friday, as proxied by the negative returns on Friday. For instance in the full period 1986-2002, the mean returns on Mondays following positive Friday returns are 0.219% to 0.535%. In contrast, the mean returns on Mondays following negative Friday returns are -0.528% to -0.810%. Similarly, we find no significant difference in May 2004 Conclusions The study re-examines the existence of the day-of-the-week effect in the Asian markets of Hong Kong, Malaysia, Philippines, Singapore and Thailand. Using eighteen years of data up to 2002, this study provides some evidence for the day-of-the-week effect (for the full period 1986-2002 and the first sub-period 19861994). However, sub-period analysis indicates that the day-of-the-week effect has generally declined and in some cases disappeared in recent years. The study also reveals that, unlike the US, there is no weekly pattern of Monday and Friday returns in the Asian markets. However, consistent with the US evidence, we found that Monday's returns are related to the previous Friday's returns. Professor Wing-Keung WONG and Nee Tat WONG, Department of Economics, National University of Singapore. THE TECHNICAL ANALYST 33 Subject Matters WHY HAVE THE RETURNS TO MANAGED FUTURES FUNDS DECREASED? by Willis Kidd and Wade Brorsen Returns to managed futures funds and Commodity Trading Advisors (CTAs) have decreased dramatically. Since funds overwhelmingly use technical analysis, the authors consider why it is that technical trading strategies have become less successful and find evidence to suggest that lower price volatility is the most likely culprit. D uring the 1980s and early 1990s, investment in the managed futures industry grew quickly. In recent years however, futures fund returns have decreased and the value of assets invested in managed futures has stagnated (Pendley and Zurla, 2002). The Barclay Commodity Trading Advisor Index in Figure 1 shows a steady trend of decreasing returns over the past twenty years. The causes of this decrease in fund performance are not fully known. Two possible explanations are: (a) decreased market volatility (and therefore profit opportunities) and (b) price distortion caused by the growth of the industry. To date, no author(s) has examined possible causes nor comprehensively studied a change in daily return characteristics. Yet research is needed to determine the ways in which the market has changed, thereby allowing technical traders to adjust trading systems to account for these changes. Our study (which uses bootstrap resampling techniques) tests the hypothesis that a structural change in price fluctuations has occurred and that this may have affected the profitability of technically managed futures funds. Evidence that technical trading returns have decreased Mean returns before 1991 and from 19912001 are presented in Table 1 for various 34 THE TECHNICAL ANALYST Figure 1. indices of Zurich Capital Markets. All of the five indices show a substantial decrease in returns. In particular, the CTA trend-following index shows a dropoff of over six percentage points. The other indices include some funds that either do not use technical trading systems or use a mixture of trading methods. Brorsen and Irwin (1987) found that 13 of 21 advisors relied solely on computer-guided technical trading systems, but that only two of 21 used no objective technical analysis. Billingsley and Chance (1997) used a dataset that let CTAs describe their trading approach. As a result, Billingsley and Chance went on to classify 80% of CTAs' returns as being from technical trading. They also pointed out that traders in their non-technical category do rely partly on technical analysis. Data we obtained from the Center for International Securities and Derivatives Markets ("CISDM", 2000) classify the CTAs as 18.2% discretionary, 0.3% quantitative, 60.5% systematic, 17.4% trend-based and 3.6% trend-identifier. Several CTAs we know that rely almost entirely on trend-following systems are classified as systematic in the CISDM database. Many of the discretionary traders also use trend-following systems based May 2004 on both charts and computers. Thus, the broader indexes may be as representative of trend-following returns as the narrower indices. The returns quoted in Table 1, however, should be considered in the light of the following: Fund returns are reported net of costs and include interest returns. Both costs and interest rates have declined over time Industry sources have related to us that some of the larger funds may have adopted trading methods that accepted a lower return in order to get reduced risk, resulting in reduced volatility. Estimating the decline in gross terms (i.e. adding back fund costs based on historical records and reports): A conservative estimate of the decrease in gross returns over the study period is 5.15 percentage points (Table 1). However, if the calculation uses records that show a much larger decrease in costs, the decrease in gross returns is more dramatic - 10.16%. The decline in interest yields: The decline in interest rates can explain part of the decrease in the net returns (interest received is Subject Matters Annual Continuous-Time CTA and Commodity Pool Trading Return Statistics Before and After 1991 a The source is the indices of Zurich Captial Markets (2002). The returns are calculated as the natural logarithm of the ending index value minus the natural logarithm of the initial value divided by the number of years. The source is Brorsen and Irwin (1985). The costs are for public funds. c The source is Brorsen (1998). The costs are for commodity trading advisors. d Averages of the annualized returns for one-year U.S. Treasury bills by Federal Reserve Bank of St. Louis reported and then converted to a continuous-time return. e The standard deviation of monthly returns was computed by year for each CTA that listed their trading system as trend-following, trend-identifier, or mechanical. The statistics reported are the simple average of these annual standard deviations. f Calculated using the CTA value-weighted return of 14.65 minus interest of 6.75 plus cost of 13.85. The cost number is calculated as the public fund cost of 19.20 minus the difference in CTA value weighted returns and public fund returns (14.65-9.30 = 5.35) and thus assumes the entire difference in CTA and public fund returns is due to differences in cost. g Calculated using the CTA value-weighted return of 9.32 minus interest of 3.80 plus cost of 10.00. The result of 15.52 is then multiplied by the ratio of standard deviations (8.05/7.54) to adjust for possible lower leverage in the more recent period, which gives the result of 16.57 b “DATA CLEARLY SUGGESTS THE RETURNS TO MANAGED FUTURES FUNDS AND CTAS HAVE DECREASED BECAUSE OF THE DIMINISHING SUCCESS OF FOLLOWING TECHNICAL TRADING STRATEGIES.” Table 1. Return Characteristics Before and After 1991 for the Two CTAs That Were the Largest Before 1991 a Variance of Daily and 20-Day Returns for Futures Prices Variance of Daily Returns Variance of 20-Day Returns 1975 or the first date in the time series. Notes: Hypothesis tests were performed using the two sample stationary bootstrap with 1,000 repetitions. Statistically significant increases are denoted by+at .10 level and ++ at .05 level. Statistically significant decreases are denoted by * at .10 level and ** at .05 level. Table 2. a 1975 or the first date in the time series. Notes: Hypothesis tests were performed using the two sample stationary bootstrap with 1,000 + repetitions. Statistically significant increases are denoted by at .10 level and ++ at .05 level. Statistically significant decreases are denoted by * at .10 level and ** at .05 level. Table 3. 6 May 2004 THE TECHNICAL ANALYST 35 Subject Matters Frequency and Mean of Breakaway Gaps in Futures Prices a 1975 or the first date in the time series. Notes: Hypothesis tests were performed using the two sample stationary bootstrap with 1,000 repetitions. Statistically significant increases are denoted by+ at .10 level and ++ at .05 level. Statistically significant decreases are denoted by * at .10 level and ** at .05 level. Table 4. Mean and Variance of Close-to-Open Changes in Futures Prices a 1975 or the first date in the time series. Notes: Hypothesis tests were performed using the two sample stationary bootstrap with 1,000 repetitions. Statistically significant increases are denoted by +at .10 level and ++ at .05 level. Statistically significant decreases are denoted by * at .10 level and ** at .05 level. Table 5. Skewness and Kurtosis of Daily Returns for Futures Prices Variance and Skewness of Breakaway Gaps in Futures Prices a a 1975 or the first date in the time series. Notes: Hypothesis tests were performed using the two sample stationary bootstrap with 1,000 repetitions. Statistically significant increases are denoted by+ at .10 level and ++ at .05 level. Statistically significant decreases are denoted by * at .10 level and ** at .05 level. Table 6. 36 1975 or the first date in the time series. Notes: Hypothesis tests were performed using the two sample stationary bootstrap with 1,000 repetitions. Statistically significant increases are denoted by+ at .10 level and ++ at .05 level. Statistically significant decreases are denoted by * at .10 level and ** at .05 level. Table 7. THE TECHNICAL ANALYST May 2004 Subject Matters down 3% per year), but is not enough to explain the overall decline in returns. further evidence that reduced price variability was the primary change in futures markets. The adoption of less risky trading strategies by larger funds: In terms of size, two funds operating in the early period clearly dominated the others. Returns and standard deviations for these two funds are reported in Table 2. Risk does show a substantial decline which supports the assertion that the larger funds changed their trading methods. But for both funds, the decline in trading returns was much greater than the decline in standard deviation. While a decline in risk may explain a portion of the decline in returns, it cannot explain all of it. However, although many variables show evidence of change, there are still a few statistics that remained generally the same. The average size of close-to-open price changes and breakaway gaps did not consistently change. The skewness of returns, gaps and close-toopen changes changed in only a few commodities. The data clearly suggests the returns to managed futures funds and CTAs have decreased because of the diminishing success of following technical trading strategies. Structural changes to price movements Any change in the way futures prices fluctuate could change the returns to technical trading. Technical trading systems developed prior to the change may therefore be obsolete. For example, three livestock commodities do indeed show decreased frequency of limit moves: pork bellies fell from 17% to 10%, feeder cattle from 5.5% to 2.2% and live cattle from 5.2% to 1.4%. Tables 3 to 7 present several other statistical measures and provide Wade Brorsen is a Regents Professor and Jean & Patsy Neustadt Chair in the Department of Agricultural Economics at Oklahoma State University. (Full details of the study will appear in the Journal of Economics and Business, MayJune 2004, pp. 159-176). References Conclusions The two dominant changes are a decrease in price volatility and an increase in the kurtosis of price changes occurring while markets are closed. These changes are consistent with the reduced profitability of technical trading being due to changes in the overall economy. The results are not consistent with increased technical trading having caused the structural change, because in that case price volatility should have increased. If economic conditions change so that futures prices become more volatile, then presumably returns to technical trading would increase. Billingsley, R.S. and Chance, D.M. (1996). Benefits and limitations of diversification among commodity trading advisors. Journal of Portfolio Management, 23, 65-79. Brorsen, B.W. and Irwin, S.H. (1987). Futures funds and price volatility. The Review of Futures Markets, 6, 118-135. Center for International Securities and Derivatives Markets (CISDM) (2000). CISDM Database. University of Massachusetts at Amherst. Pendley, K. and Zurla, K. (2002). Managed futures: Performance hinders growth but still outshines equities. Futures Industry, July/August, 20-22. Willis Kidd is a former graduate research assistant in the Department of Agricultural Economics at Oklahoma State University. May 2004 THE TECHNICAL ANALYST 37 Subject Matters NONLINEARITY FAVOURS NONLINEAR TA TECHNIQUES by Kian-Ping Lim and Venus Khim-Sen Liew Understanding the characteristics of nonlinearity in financial markets is crucial to the development of technical analysis - it may help us determine which TA techniques will work better than others. Using data from the SouthEast Asian stock and currency markets, the authors describe nonlinearity, show evidence for its existence and talk about its implications for TA. S tudies into the financial markets have been dominated by the linear paradigm. The linear paradigm assumes that financial timeseries conform to linear models, which may be best represented by a continuous straight line on a graph. Moreover, it is widely believed that (1) stock prices can be well approximated by the Capital Market Pricing Model (CAPM) and the Arbitrage Pricing Theory (APT) Model; and (2) foreign exchange rate movements may be determined by the Purchasing Power Parity (PPP), Interest Rate Parity (IRP) and other fundamental models. All these are commonly applied linear models. However, there is no solid reason to suppose that movements of financial prices must be intrinsically linear. One can hardly find a continuous straight line on any graph of any financial price. Rather, one normally comes across combinations of wave-like or even U-, S-, V-, W- and L-shaped patterns. In fact, some recent empirical studies have shown that financial variables exhibit nonlinear movements. (All movement that exhibits polynomial (e.g. square, cubic), exponential, logistic and/or trigonometric (wave-like) functions are nonlinear in character). Among others, Nicholas Sarantis found empirical evidence on the nonlinear behavior in the stock prices of seven major industrial economies (G-7), whereas Christopher Baum and others have detected the presence of nonlinear adjust- 38 THE TECHNICAL ANALYST ment dynamics in developed foreign exchange markets. The potential existence of nonlinearity in financial markets is due to the dynamic, asymmetric and heterogeneous behavior of market players in their response to market information and conditions. Another cause is the nonproportional speed of adjustment in financial prices. A relatively small rise in a financial price, for example, may not be transformed into arbitrage action if such profit is not large enough to cover the trading cost. Thus, small changes in prices will be left unadjusted. However, once the price exceeds certain limits whereby marginal profits meet the players' expectations, they will certainly adjust. In such case, the larger the price change, the faster the market adjustment. Our study This study reports the empirical evidence for nonlinear behavior in the stock prices and spot exchange rates of the major developing South-East Asian (SEA) financial markets. Our stock price data consists of the daily growth rates (from the close of one day to the Growth Rates next) of the Jakarta Composite Index (JCI), the Kuala Lumpur Composite Index (KLCI), the Philippines Composite Price (PCOMP), the Singapore Straits Times Index (STI) and the Stock Exchange of Thailand (SET). As for currencies, we study the daily growth rates of the spot US dollar based exchange rates of the Indonesia rupiah (IDR), the Malaysia ringgit (MYR), the Philippines peso (PHP), the Singapore dollar (SGD) and the Thai baht (THB). General stock markets characteristics The results of our study on SEA stock prices are summarized in Table 1. Table 1 shows that on average the sum of daily positive growth rates in stock prices are slightly more than those of negative growth rates in the KLCI (mean=0.002%) and the STI (0.005%). On the other hand, the reverse is true for the JCI (- 0.001%), the PCOMP (- 0.003%) and the SET (- 0.038%). However, as the mean value is susceptible to bias due to outliers (unordinary large or small values), the median value, which is not affected by outliers, is more reliable. By this value, all stock indices exhibit zero average daily growth rates, implying JCI KLCI PCOMP STI SET 2/1/1990 31/10/2001 3087 – 0.001 0.000 13.128 –12.732 1.558 2/1/1990 31/10/2001 3087 0.002 0.000 20.817 – 24.153 1.715 2/1/1990 31/10/2001 3087 – 0.003 0.000 16.178 – 9.744 1.665 2/1/1990 31/10/2001 3087 0.005 0.000 14.868 – 9.672 1.358 2/1/1990 31/10/2001 3087 –0.038 0.000 11.350 – 10.028 1.889 0.485 14.195 0.000* 0.461 36.898 0.000* 0.5571 11.558 0.000* 0.201 14.070 0.000* 0.287 7.432 0.000* 0.006 0.000* 0.006 0.000* 0.028 0.000* 0.006 0.000* Summary Statistics Sample period No. of observations Mean Median Maximum Minimum Standard deviation Normality Analysis Skewness Kurtosis JBN Test (p-value) Linearity Tests HBL Test (p-value) LST Test (p-value) 0.036 0.000* Table 1. Summary statistics, normality analysis and linearity test results of growth rates of major SEA stock prices May 2004 Subject Matters "trading rules based on techniques such as Elliott Waves and head-and-shoulders, which already incorporate some sense of nonlinearity, may be more reliable or profitable. In contrast, reservations must be made for technical analysis that uses linear autoregressive, moving average or exponential moving average models." break-even investment or arbitrage activities in these markets in the long term, even though profits or losses may be encountered by investors or arbitrageurs in the short term. By referring to the maximum and minimum values in Table 1, we know that the positive and negative daily growths rates in the SEA region have recorded a peak of 20.817% and 24.152% respectively, both from the Malaysian stock market. Regarding investment risk, the standard deviation value shows that the Thailand stock market is the riskiest (standard deviation=1.889) followed by the Malaysian market (1.715), whereas the Singapore stock market (1.358) has the least risk. Evidence for nonlinearity in stock prices More interestingly, the skewness values in Table 1 show that these financial prices have asymmetrical distribution (0 in normal condition). It is therefore not surprising to observe that the normality assumption (i.e. symmetrical bell-shaped distribution) has been strongly rejected by the Jarque-Bera normality (JBN) test (see Box 1). However, this finding cannot be taken as statistical evidence for nonlinearity. Two formal tests capable of distinguishing the linearity or nonlinearity of our growth rates - the HinichBispectrum Linearity Test (HBL Test) and the Lukkonen-Saikkonen-Teräsvirta Test (LST Test) - are applied in this study. Briefly, the former is able to detect the existence of nonlinear self-dependencies whereas the latter is useful in capturing the potential nonlinear adjustment of stock or forgien exchange market dynamics. The results of the HBL linearity test (Table 1) show that stock prices exhibit strong nonlinear dependencies on their own past records. The LST test tells us more and suggests the nonlinearity present can be characterized by a type of nonlinear time-series model (the Smooth Transition Autoregressive (STAR) model) which captures bell- and S-shaped nonlinear adjustments (exponential and logistic nonlinearity). IDR MYR PHP SGD THB 16/11/1995 31/12/2002 1759 0.078 0.017 30.189 – 23.316 2.512 2/1/1990 31/8/2001 2179 0.020 0.000 7.196 – 9.157 0.695 16/11/1995 31/12/2002 1773 0.040 0.008 7.176 – 12.518 0.776 2/1/1990 31/12/2002 3267 – 0.003 0.000 2.762 – 4.144 0.356 2/1/1990 31/12/2002 3210 0.016 0.000 20.769 – 6.353 0.753 1.172 34.783 0.000* – 0.084 43.141 0.000* – 1.304 54.518 0.000* – 0.908 20.905 0.000* 6.185 196.243 0.000* 0.006 0.000* 0.006 0.000* 0.010 0.000* 0.006 0.000* 0.006 0.000* Summary Statistics Sample period No. of observations Mean Median Maximum Minimum Standard deviation Normality Analysis Skewness Kurtosis JBN Test (p-value) Linearity Tests HBL Test (p-value) LST Test (p-value) Table 2. Summary Statistics, normality analysis and linearity test results of growth rates of major SEA exchange rates May 2004 THE TECHNICAL ANALYST 39 Subject Matters Brief note on the test statistics p-values show how far we can reject a null hypothesis. Conventionally, a p-value of 0.10 or larger is taken as evidence for not rejecting a null hypothesis. In the tests listed in Tables 1 and 2 the p-values are significantly less than 0.10 and result in the rejection of the following null hypotheses: JBN test: Normality does exist HBL test: Nonlinearity does not exist LST test: STAR-type nonlinearity does not exist Box 1. General foreign exchange markets characteristics Table 2 depicts the results of our study on the SEA daily spot exchange rates. Table 2 shows that, on average, the sum of daily positive growths (depreciation) are either equal to or more than those of negative growths (appreciation) in all exchange rates (mean/median are zero or positive in value) except the Singapore dollar, which recorded an average mean value of - 0.003% (median=0, howev- 40 THE TECHNICAL ANALYST er). It should be noted that while the median for other foreign exchange rates are 0 in value, implying break even long term arbitraging and hedging activities, there are two rates namely the rupiah (median=0.078%) and peso (0.008%) where investors holding short positions may be slightly better off. However, it is worth knowing that the peso has the highest exchange rate risk (standard deviation = 2.512, maximum = 30.189, minimum = 23.316; much riskier than its stock price index) in the SEA region. As for the other exchange rates, they have lower risk than their corresponding stock indices. behavior, as found in this study, has crucial implications for financial market researchers and practitioners alike. We can no longer take the linear assumption for granted. Hence, linear models like the CAPM and APT (for stocks), and the PPP and IRP (for exchange rates) may need modification before they can be readily applied, at least to the South-East Asian region. To this end, trading rules based on techniques such as Elliott Waves and headand-shoulders, which already incorporate some sense of nonlinearity, may be more reliable or profitable. In contrast, reservations must be made for technical analysis that uses linear autoregressive, moving average or exponential moving average models. Evidence for nonlinearity in foreign exchange rates Similar to the findings in the stock markets, the skewness and JBN values show that the SEA stock exchange rates are asymmetrical and thus non-normal in nature. On top of that, the results from the HBL and LST linearity tests provide strong evidence of nonlinear behaviour in all these exchange rates. More reliable technical trading rules The existence of nonlinear financial price May 2004 Kian-Ping Lim is a lecturer in the Labuan School of International Business and Finance, Universiti Malaysia Sabah, Malaysia. Venus Khim-Sen Liew is a research assistant at the Faculty of Economic and Management, Universiti Putra Malaysia, Malaysia Book review ADVANCED SWING TRADING A handful of books on swing trading have appeared in recent years, in particular Marc Rivalland's book published by Harriman House. In contrast to Rivalland's work, Crane's book assumes the reader has a good working knowledge of charting techniques and takes a more in-depth and systematic approach to the various techniques available to the swing trader. Swing trading is designed to take advantage of shortterm movements in longer-term market trends. This allows more pro-active traders to identify and exploit profit making opportunities in normal market volatility. Crane calls such movements "reaction swings" and he goes on to explain how they allow the trader to identify not only price objectives and stop loss levels, but also the timing of future moves or "reversal dates". Advanced Swing Trading Strategies to predict, identify, and trade future market swings By John Crane Published by John Wiley 219 pages, £45.50 ISBN 0-471-46256-X Reaction swings resemble flags in the middle of a trend and are based on the theory of action/reaction. This is the basic pattern of a trending market (action) which corrects and then resumes its trend (reaction). The analysis of this reaction swing allows the trader to anticipate subsequent moves and time future reversals in the current price trend. The mid-point of the reaction swing can be used to make projections by drawing a line from the start of the main trend through the mid-point of the swing. This accurately pinpoints both the price and timing of the next price reversal. The reaction swing is familiar to technical analysts as a flag or pennant. These usually indicate a mid-point of a price trend but offer only limited information regarding the timing of a price objective or future turning points. The reaction swing is a simple method that can make greater use of the information inherent in these patterns. The reaction cycle represents the bigger picture allowing the trader to identify the start of a market trend, its mid-point and the end of the major trend. In an uptrending market, identifing the first reaction swing is crucial in establishing the beginning of a reaction cycle. Having discussed the reaction swing and cycle, Crane goes on to discuss the application of Gann lines in relation to action/reaction theory and also presents a useful overview of trading "hints" such as reversal price patterns, gapping patterns and trail days. This book is written for the experienced trader who May 2004 THE TECHNICAL ANALYST 41 Book review already has a solid understanding of technical analysis. While swing trading is a relatively new technique for trend analysis, it is not as groundbreaking as some recent books have implied. Swing trading relies on the application of simple and established TA techniques and as such, this trading method is not as advanced as Crane's book title suggests. In the text, the author readily admits to being an inexperienced writer and this shows in his descriptions of the various techniques he presents. He therefore relies on numerous examples to illustrate the subject with little or no reference to the market psychology that is behind the behaviour of the reaction cycle. The problem with a heavy reliance on market examples is that the reader has no way of knowing how carefully chosen the exam- ples were by the author. A more scientific and theoretical approach to the subject would greatly enforce the arguments presented in this and numerous other technical analysis publications. This is not an easy book to read and understand. The principles that Crane attempts to describe in each chapter are not always as clearly explained as they should be. Moreover, the time required to master the numerous variations of the swing trading techniques described in the book is probably more than most traders would consider, especially as he or she is doubtless already using other techniques in their trading strategies. However, the numerous charts are well presented and Crane's publication adds to the relatively limited amount of literature on a valuable subject. Letters LETTERS TO THE EDITOR SIR: I would like to draw your readers' attention to the dangers of data snooping - a phenomenon that I believe should be considered in all assessments of TA techniques. Data snooping is the generic term for the danger that the best forecasting model found in a given data set by a certain specification search is just the result of chance instead of the result of truly superior forecasting power. Jensen (1967) already argued that the good results of the relative-strength trading rule used by Levy (1967) could be the result of survivorship bias. That is, strategies that performed well in the past get the most attention by researchers. Jensen and Benington (1969) go a step further and argue, "Likewise given enough computer time, we are sure that we can find a mechanical trading rule which works on a table of random numbers - provided of course that we are allowed to test the same rule on the same table of numbers which we used to discover the rule. We realize of course that the rule would prove useless on any other table of random numbers, and this is exactly the issue with Levy's results." Another form of data snooping is the publication bias. It is a well-known fact that studies presenting unusual results are more likely to be published than the studies that just confirm a well-known theory. The problem of data snooping was addressed in most of the work on technical analysis, but for a long time there was no test procedure to test for it. Finally White (2000), building on the work of Diebold and Mariano (1995) and West (1996), developed a simple and straightforward procedure for testing the null hypothesis that the best forecasting model encountered in a specification search has no predictive superiority over a given benchmark model. The alternative is of course that the best forecasting model is superior to the benchmark. Summarized in simple terms, the procedure bootstraps the original time-series a great number of times, preserving the key characteristics of the time-series. White (2000) recommends the stationary bootstrap of Politis and Romano (1994). Next, the specification search for the best forecasting model is executed for each bootstrapped series, which yields an empirical distribution of the performance of the best forecasting model. The null hypothesis is rejected at the alpha percent significance level if the performance of the best forecasting model on the original time series is greater than the alpha percent cut-off level of the empirical distribution. This procedure is called White's Reality Check (RC) for data snooping. Sullivan, Timmermann and White (1999, 2001) utilize the RC to evaluate simple technical trading strategies and calendar effects applied to the DJIA in the period 1897 to 1996. Sullivan et al. (1999) take the study of Brock et al. (1992) as a starting point and construct an extensive set of 7846 trading rules, consisting of Alexander's (1961) filters, moving averages, support-and-resistance, channel break-outs and on-balance volume averages. It is demonstrated that the results of Brock et al. (1992) hold after correction for data snooping, but that the forecasting performance tends to have disappeared in the period after the end of 1986. For the calendar effects (for example the January, Friday and the turn of the month effect) Sullivan et al. (2001) find that the RC in all periods does not reject the null hypothesis that the best forecasting rule encountered in the specification search does not have superior predictive ability over the buyand-hold benchmark. If no correction were made for the specification search, then in both papers the conclusion would have been that the best model would have significant superior forecasting power over the benchmark. Hence Sullivan et al. (1999, 2000) conclude that it is very important to correct for data snooping otherwise one can make wrong inferences about the significance of the best model found. Gerwin Griffioen, analyst, Insinger de Beaufort Asset Management, The Netherlands May 2004 THE TECHNICAL ANALYST 43 Commitments of Traders Report COMMITMENTS OF TRADERS REPORT 16 January 2004 – 4 May 2004 Non-commercial net long positions and spot rates 10-year US Treasury 10-yr Treasury Spot 5-year US Treasury Source: CBOT -250000 4.80 5-yr Treasury Spot Source: CBOT 300000 3.80 4.60 -200000 3.60 250000 4.40 -150000 3.40 4.20 -100000 200000 3.20 4.00 150000 3.80 -50000 3.60 3.00 100000 0 2.80 3.40 50000 50000 2.60 3.20 100000 3.00 Jan-13 Feb-10 Mar-09 Dow Jones Industrial Average Apr-06 DJIA Spot 0 May-04 2.40 Jan-13 Feb-10 Swiss franc Source: CBOT -6000 11000 Mar-09 Swiss franc Apr-06 Spot May-04 Source: CME 20000 1.32 15000 -5000 1.3 10800 10000 -4000 1.28 10600 5000 -3000 1.26 10400 0 -2000 1.24 10200 -5000 -1000 10000 0 9800 1000 2000 9600 Jan-13 44 Feb-10 Mar-09 THE TECHNICAL ANALYST Apr-06 May-04 May 2004 1.22 -10000 1.2 -15000 1.18 -20000 Jan-13 Feb-10 Mar-09 Apr-06 May-04 Commitments of Traders Report Pound sterling Pound sterling Spot Yen Source: CME 25000 1.95 20000 1.90 15000 1.85 Japanese yen Spot Source: CME 80000 112 111 60000 110 109 40000 108 107 20000 10000 106 1.80 0 105 5000 104 1.75 -20000 103 0 1.70 Jan-13 Feb-10 Euro Mar-09 Euro Apr-06 Spot -40000 102 Jan-13 May-04 Feb-10 3-month eurodollar Source: CME 35000 1.30 Mar-09 3-month eurodollar Apr-06 Spot May-04 Source: CME 500000 1.12 400000 1.10 30000 1.28 300000 25000 1.08 200000 1.26 100000 1.06 20000 1.24 0 1.04 15000 -100000 1.22 -200000 10000 1.02 -300000 1.20 5000 1.00 -400000 0 1.18 Jan-13 Feb-10 Mar-09 Apr-06 May-04 -500000 0.98 Jan-13 May 2004 Feb-10 Mar-09 Apr-06 THE TECHNICAL ANALYST May-04 45 Commitments of Traders Report Nasdaq Nasdaq Spot Nikkei Source: CME 2200 -25000 Nikkei Spot Source: CME 2200 -25000 2150 -20000 2150 -20000 2100 2050 -15000 2100 2050 -15000 2000 -10000 2000 -10000 1950 1900 -5000 1950 1900 -5000 1850 0 1850 0 1800 5000 1750 Jan-13 Feb-10 Gold Mar-09 Gold Apr-06 Spot 1800 5000 May-04 1750 Jan-13 Feb-10 US dollar Index Source: CEI 160000 Mar-09 US dollar index Apr-06 Spot May-04 Source: NYCE 430 -12000 117.00 420 -10000 116.00 410 -8000 115.00 400 -6000 114.00 390 -4000 113.00 380 -2000 112.00 370 0 140000 120000 100000 80000 60000 40000 20000 0 Jan-13 46 Feb-10 Mar-09 THE TECHNICAL ANALYST Apr-06 May-04 May 2004 111.00 Jan-13 Feb-10 Mar-09 Apr-06 May-04 Commitments of Traders Report Non-commercial April 12 April 20 April 27 May 4 10yr Treasury -100749 -100749 -191271 -165896 5yr Treasury 118310 118310 100899 130465 561 561 1203 - 222 Swiss franc -5941 -5941 -11092 -7089 Pound Sterling 10648 10648 3732 4730 Japanese yen 24760 24760 204 2973 Euro 5743 5743 5570 6999 3m eurodollar -67991 -67991 -312512 -367205 Nasdaq -7263 -7263 -8909 -7205 Nikkei 3692 3692 -275 3850 138696 138696 57804 54663 -3835 -3835 -2735 -1543 DJIA Gold US$ index Commercial April 12 April 20 April 27 May 4 10yr Treasury -100749 232784 -191271 278056 5yr Treasury 118310 9227 100899 -27468 561 2147 1203 2115 Swiss franc -5941 17896 -11092 12794 Pound Sterling 10648 -9665 3732 -7257 Japanese yen 24760 -10506 204 -16933 Euro 5743 -14332 5570 -9741 - 67991 366523 -312512 532849 Nasdaq -7263 18888 - 8909 21722 Nikkei 3692 -2214 -275 -5317 138696 -122430 57804 - 89398 -3835 304 -2735 -514 DJIA 3m eurodollar Gold US$ index Charts and tables: Open interest (futures only) All data provided by the Commodity Futures Trading Commission (CFTC) with permission May 2004 THE TECHNICAL ANALYST 47 Training and events diary TRAINING AND EVENTS DIARY 22/23 June 4 June 9 June Course: Introduction to technical analysis Organiser: 7City Contact: s.sycamore@7city.co.uk Event: STA monthly meeting Organiser: Society of Technical Analysts Contact: info@sta-uk.org Course: An introduction to charting and technical analysis Organiser: IPE Contact: training@theipe.com 23 June 7 July 19 July Course: Advanced technical analysis Organiser: The Oxford Princeton Programme Contact: info@oxfordprinceton.com Event: STA monthly meeting Organiser: Society of Technical Analysts Contact: info@sta-uk.org Course: Introduction to technical analysis Organiser: Quorum Training Contact: courses@quorumtraining.co.uk 23 August Late October Late October Course: Introduction to technical analysis Organiser: 7City Contact: s.sycamore@7city.co.uk Course: Technical analysis & charting Organiser: ChartWatch Contact: Market Directional Analysis Tel: 020 7723 0684 Course: Advanced t echnical analysis Organiser: ChartWatch Contact: Market Directional Analysis Tel: 020 7723 0684 10 November 15 November 24/25 November Course: Introduction to technical analysis Organiser: 7City Contact: s.sycamore@7city.co.uk Course: Introduction to technical analysis Organiser: Quorum Training Contact: courses@quorumtraining.co.uk Course: An introduction to charting and technical analysis Organiser: IPE Contact: training@theipe.com For training and events diary submissions please email us at: editor@technicalanalyst.co.uk All venues are in London 48 THE TECHNICAL ANALYST May 2004