Competition and Mutual- ism among Early Tele
Transcription
Competition and Mutual- ism among Early Tele
Competition and Mutualism among Early Telephone Companies William P. Barnett Glenn R. Carroti University of California, Berkeley In an exploratory study of the early telephone industry, we search for evidence of competition and mutualism between legally autonomous companies. Neighboring companies are found to have both types of interdependencies, although their exact nature depends on organizational form. Companies in separate geographical locations are found to be competitive with each other, regardless of organizational form. The two prevalent organizational forms in the industry at this time each apparently flourished in distinct niches and were symbiotically related. The findings are interpreted within a community ecology framework.* One of the more controversial features of organizational ecology concems its depiction of the environment. Traditionally, ecological theory has conceived of environments as completely exogenous from organizations (Hawley, 1968). More recent formulations continue this tradition: environments are seen as exogenous conditions that select for and against organizations with particular characteristics (Hannan and Freeman, 1977). The challenging view comes from those who argue that it makes little sense to separate organizations from their environments. Organizational environments have been claimed to be controlled by organizations (Perrow, 1986), enacted by organizations (Weick, 1979), or tightly coupled with organizations (Granovetter, 1985), © 1987 by Cornell University. 0001-8392/87/3203-0400/S1.00, The research reported here was supported in part by the Institute of Industrial Relations, University of California, Berkeley. Other support was provided by the AT&T Fellowship in Telephone History (to Barnett) and by National Science Foundation Grant #BNS-8700864 (to Carroll, while he was a Fellow at the Center for Advanced Study in the Behaviors! Sciences. Palo Alto), We are extremely grateful to Roy Atwood for providing access to the data analyzed here and to Robert Lewis, Robert Garnet, and Mildred Ettlinger at the AT&T Histohcal Archives for their advice and assistance. Jacques Delacroix, Claude S. Fischer, Michael T. Hannan, Heather Haveman, Y. Paul Huo, Anand Swaminathan, and Nancy Brandon Tuma made helpfu! comments on earlier drafts. Ross Boylan, Jonathan Leonard, David Levine, Will Mitchell, and Dan Ouan made useful suggestions about the empirical analyses. 1 We restrict our discussion to the generic fomis of interdependence, competition and mutualism. While the models we use t>elow allow asymmetric interdependence, we do not. for reasons of conceptual clarity, cast the theoretical discussion in terms of ali possible painftilse combinations of interdependence. See Brittain and Wholey (1988) and Pianka (1978) for discussion of these topics. Discussion of this issue often fails to recognize that the two positions are not necessarily at odds with each other. Organizations can have tight connections with some elements in their environments and yet at the same time be subject to the exogenous conditions of other aspects of the environment. The issue is thus an empirical one of determining where to draw the "environmental" boundaries for any particular organization or set of organizations. One guideline that researchers might use in addressing this matter involves looking at the similarity of outcomes within a group of organizations. For example, if a group of organizations shows shared fates, then it probably does not make sense to treat members of the group as part of the selection environment of any particular organization in the group. Instead, the whole group should be analyzed with respect to its common environment. Hannan and Freeman (1977: 960-961) argued that such an approach can accommodate many of the concerns of the challengers: ", . . large dominant organizations can create linkages with other large and powerful ones so as to reduce selection pressures. If such moves are effective, they alter the pattern of selection. In our view the selection pressure is bumped up to a higher lever. So instead of individual organizations failing, entire networks fail," By the ecological conception, shared fates among organizations indicate interdependence. When organizations negatively affect one another, they are competitive. When they enhance each other's viability, organizations are mutualistic.*' Organizational interdependence can exist at several levels: between individual organizations, between populations of organizations, and between communities of organizations. For the most part, current organizational researchers think only of the organizational level. 400/AdmJnJstrative Science Quarterly, 32 (1987): 400-421 Competition and Mutualism Our goal in this paper is to show that higher level interdependencies can make a real difference. Toward this end, we study the processes of competition and mutualism among companies in the early telephone industry. Our analysis examines organizational interdependence in models of organizational mortality, growth, and technological capability. Among the findings, we show that mutualism existed among individual organizations, while communities of organizations show indirect evidence of competition. The study therefore supports the claims of those who denounce a strict separation of individual organizations from their environments. At the same time, however, it shows that the approach advocated by Hannan and Freeman (1977) can overcome these objections. ORGANIZATIONAL INTERDEPENDENCE In ecological theory, organizations are thought to be interdependent when they affect each other's fate. Interdependence has been studied with respect to a variety of outcomes. For some research problems, the relevant outcome is growth and decline in organizational size (see Hannan and Freeman, 1978; McPherson, 1983; McPherson and Smith-Lovin, 1988). For other problems, organizational foundings and deaths better reflect interdependence. We expect that telephone companies affected one another's size and life chances, and so we focus on both types of outcomes. Competition among organizations can be either direct or diffuse (Hannan and Freeman, 1988b). Direct competition occurs between pairs of organizations, each identifiable to the other. Most often, direct competition is thought of as the result of a zero-sum contest between organizations that require the same resource. By contrast, diffuse competition occurs among many organizations, with competitors largely anonymous to one another. It results also from limited common resources. Like competition, mutualism can be either direct or diffuse. Direct mutualism occurs, for example, when organizations with complementary abilities cooperate to the benefit of both. Although it is less commonly discussed, diffuse mutualism also occurs, as when organizations with similar characteristics enhance each other's institutional legitimacy (Hannan and Freeman, 1987). Hawtey (1950: 209), drawing heavily from Durkheim (1933), described two distinct bases for mutualism: commensalism, defined as positive interdependence based on supplementary similarities; and symbiosis, which is positive interdependence based on complementary differences. The most common example of symbiosis is the mutual benefit resulting when different types of producers transact in markets. Commensalism is often the result when similar organizations work together in concerted political action. Mutualism is important to the ecology of organizations because it creates organizational communities—networks of organizations that exist with unit properties of their own (Hawley, 1986). For example, manufacturers in many industries engage in ongoing symbiotic transactions with upstream suppliers and downstream distributors, while also main401/ASQ, September 1987 taining commensal relations with similar companies through trade associations. An organizational network of this sort can have vital implications for its members. The strength of a successful organization in one community, compared to its competitors in another, results in part from the strength of that organization's mutualistic partners and the manner in which its community is organized. Consequently, organizational communities may be viewed as competing with each other, although at a high tevel of analysis. For the most part, organizational researchers have not studied mutualism and competition together. Thus, w e know very little about when mutualism rather than competition will exist between organizations. Similarly, w e are ill-informed about when mutualism will be symbiotic or when it will be commensal. As a consequence, w e know very little about what gives rise to organizational communities or of how communities themselves compete.* More fundamentally, our inattentiveness t o mutualism and to the organizationa! community has sometimes led to the spurious conclusion that competition is random. The reason is simple enough, but elusive. Diffuse competition among organizations has been characterized as "random," because a rival cannot be identified for the purposes of organization-level competitive strategy (Emery and Trist, 1965). In this way, diffuse competition among organizations has been equated to the atomistic view of competition advocated by economists. However, diffuse competition at the organization level may result from direct competition between organizationaf communities. After all, when one organizational community outcompetes another, the organizations involved do not win or lose one-on-one with some rival. Instead, the overall viability of organizations in one community is traded off against the overall viability of those in another community. This is diffuse, seemingly random competition at the organizational level. But to each community, taken as a unit, the competition is nonrandom and direct. There is much to gain, therefore, by studying interdependence w i t h an eye for both competition and mutualism and for patterns that may appear at all levels of analysis. Organizational Interdependence in the Early Telephone Industry W e analyze data on the early telephone industry, most of which were compiled by Atwood (1984). These data record the organizational life histories of al! telephone companies ever appearing in Johnson, Washington, or Iowa counties in southeast iowa from 1900 to 1917. The early telephone industry of Iowa has several characteristics that make it attractive for the study of organizational interdependence. First, the telephone industry experienced rapid growth over this period, especially in rural areas such as Iowa. At the beginning of the century, roughly 2 percent of all farms in the U.S. had telephones (10 percent of all households did). By 1920, almost 40 percent of farms had telephones, while only 35 percent of households did (Fischer, 1987). Second, t w o distinct organizational forms operated in the industry during this era; comlee. however. Astiey's (1985) speculative mercially Organized firms and mutually organized companies. discussion. The Commercial telephone companies existed primarily to 402/ASQ, September 1987 Competition and IMutualism make profits and were organized much the same as any business firm. Some were privately held; others issued stock to raise capital. These companies operated mostly in small cities. Table 1 describes the companies studied. Table 1 The Teiephone Industry in Three Counties of Southeast towa. 1900-1917 Mutual companies Operating companies Mean company size in telephones Companies providing long-distance service Companies issuing stock Companies operating oniy in one county Companies operating oniy in two counties Companies operating in all three counties Organizational deaths Organizational foundings Commercial companies Total 222 27 249 32 3,172 407 13 23 36 135 18 153 207 19 226 14 5 19 1 51 215 3 10 18 4 61 233 Among the commercial firms in this area was the Iowa Teiephone Company, a part of the Bell System. Because this company was not a dominant actor in southeast Iowa during the period under study, we treat it as we do the other commercial firms. For rural areas, this must have been common, for Bell operating companies were unable to capture more than one-third of the rural market before the Depression (Danielian, 1939). Mutual telephone companies were consumer cooperatives, organized and solicited primarily by farmers and rural townspeople. These companies raised capital from their nt^embers and existed in order to provide telephone service without regard for profitability. Fischer (1987:8) provided a rich description: Typically, a rural mutual system or farmer line v^^as organized by a group of leading farmers, or a small-tov^^n merchant or doctor, whose efforts to solicit service from a major commercial company had failed. For an initial investn:>ent of $15 to $50 and often their time and materials, roughly 15 to 50 farmers would combine as shareholders in a mutual stock company, receive a telephone, and connection to others in the rural neighborhood. Annual rental fees might run from S3 to $18 a year, less if the subscriber was a shareholder. (Shareholders, however, were often assessed for needed capital.) If the system had a switchboard, a farm wife or daughter typically served as operator during the daytime. Often, the shareholders arranged a connection to a commercial, or larger mutual, company's switchboard in town, and through that, to the wider world. As Figure 1 shows, the mutual organizational form proliferated rapidly in this area during the study period. By 1917, mutual telephone companies vastly outnumbered commercial ones. The dynamics behind the patterns of population growth can be seen in Figure 2. The sharply irregular patterns of founding 403/ASQ, September 1987 Figure 1. Operating tel^hone companies in three OHinties in Iowa, 1910-1917. 175 n 150- « 125-1 UJ Z 5 100 O Commercial o Mutual u. O 75- 50H 25- 01900 1905 1910 1915 1920 YEAR and death suggest the industry was in a period of transition, or disequilibrium. Appendix A reports the form-specific data on foundings and deaths. There are solid reasons for expecting that telephone companies experienced both competition and commensalism. Figure 2. Foundings and deaths of teiephone companies in three countim in Iowa, 1900-1917. 70-1 60- 50- Foundings Deaths 40- 30- 20- 10- 01905 1900 YEAR 404/ASQ, September 1987 1910 1915 1920 Competition and Mutuafism Thompson (1967) used the telephone industry as a prime example of the "mediating technology." Organizations with such a technology are rewarded for connecting people with as many other people as possible. To do this successfully, organizations use technological systems that are both standardized and extensive. Telephone companies in Iowa could increase the extensiveness of their systems either by encroaching on the territories of their neighbors (direct competition) or by connecting with each other (direct commensalism). In fact, companies commonly used either or both strategies during this period (U,S. Federal Communications Commission, 1938: 130-131). They also joined together in commensal organizations such as the Iowa Telephone Association, an industry association of independent (non-Belt) telephone companies. Symbiosis was also likely among these companies, although as a relationship between organizational forms at the population level. Each organizational form thrived in a different environment. The commercials tended to stay in more urban areas, where business practices were institutionalized and markets for capital and labor were close by. As Fischer (1987) convincingly demonstrated, Bell and the larger commercial companies had little enthusiasm for expanding into the rural farm areas. This left the rural telephone market open for the mutual companies, which flourished in these areas due to strong customer loyalty,^ Thus, the overall market for telephones was apparently divided between the two forms. What likely made the division symbiotic were the many interconnections between companies of the two forms. Although these interconnections were often fraught with conflict (Atwood, 1984), enough succeeded to make it possible for each form to provide service to the other's market. In other words, by connecting with each other, the two forms extended the overall system. Finally, it is possible that community-level competition occurred, Networks of companies, commensally related within each form and symbiotically related between forms, may have competed with each other, possibly by encroaching on each other's territory, by stealing each other's mutual companies, and by price and service competition between the dominant commercials, Fischer (1987) told of how Bell and the larger independents competed with each other for connections to the mutual lines, Atwood (1984) reported that localized, hierarchical networks did develop in these areas of Iowa, with commercial companies playing a central, coordinating role in each. If so, the commercial form was ecologically dominant in each community, controlling many of the activities of the community and driving the community's competitive relations with other communities (Hawley, 1950). Whether any or all of these patterns of interdependence existed in the early telephone industry is an empirical question. We address it here with an exploratory approach, since we find each of these scenarios theoretically plausible, and there is no previous research of this kind, 3 Modeling Organizational Interdependence llrdn,owa•S^XZu%Tti rd™'°S'^"XZ%Tt Following g Hannan and Freeman (1988a, 1988b), we first ff analyzed interdependence by modeling the effects off Corporate Archives. 405/ASQ, September 1987 organizational population density on the death rates of Individual organizations. Hannan and Freeman argued that the number of organizations of a given form, or population density, is crucial to interdependence. They contended that as density begins to increase, mutualism results: "increasing density will lower [mortality] rates by increasing the legitimacy of the form (and of populations using this form). Low density also hampers attempts at coordinated political action to protect and defend claims of the population or of some of its members. Increases in numbers alleviate these problems. Growth in numbers gives force to claims of institutional standing and also provides economies of scale in political and legal action" {Hannan and Freeman, 1988bK But the nature of interdependence changes as a population continues to increase in size. "At high density, competitive interactions intensify. Growth in numbers increases the likelihood and intensity of both direct competition between pairs of organizations and diffuse competition among all (or many) of them. Individual organizations can easily avoid direct competition with others for members and other scarce resources when there are few organizations in the system. As the number of potential competitors grows, avoidance becomes more difficult" (Hannan and Freeman, 1988b). Combined with the mutualism argument, the empirical implication is a Ushaped effect of population density on the death rates of organizations. In a consistent set of findings, Hannan and Freeman (1988b) showed such a relationship holding across populations of national labor unions, semiconductor manufacturing firms, and newspaper publishing organizations.* To distinguish between direct and diffuse interdependence among these companies, we calculated separate density measures according to geographic proximity. The "local density" of a company's environment is defined as the number of companies operating within the same county as that company. A positive relationship between local density and the death rates would be consistent with direct competition between neighboring companies. The other measure, "non-local density," is defined as the number of companies operating in counties where that company does not operate. A positive relationship between non-local density and the death rate suggests that an organization faces diffuse competition from firms operating outside its service areas. Such competition among non-neighboring companies would be indirect evidence of direct competition between organizational communities. Other, less positive evidence has come from other organizational populations in studies by Tucker et al. (1988) and .Delacroix, Swaminathan, and Sdt (1987). However, neither of those studies covers a time frame nearty as long as Hannan and Freeman's. For that matter, nor does the present study. The measurement of local and non-local density on the basis of counties is, of course, not perfect. But it is, we believe, defensible on empirical grounds. Moreover, the historical accounts of the industry at this time suggest that political boundaries of all kinds were important barriers to expansion —companies sought regulatory approval and monopoly rights from the governing political bodies. Consistent with this claim is the strong empirical association between the number of telephone companies in a state and its number of political units, shown by Carroll, Delacroix, and Goodstein (1988). Organizational mortality has the advantage of being a relatively unambiguous phenomenon to measure. Operationally, 406/ASQ, September 1987 Competition and Mutualism we used the statistical construct known as the instantaneous rate of death. In formal terms, it is defined as + Af)/Af] where qj is the probability of death between two discrete time points. Using the rate of death as the operational dependent variable implies exactly other more intuitive constructs such as the expected organizational lifetime, an inverse function of the rate (see Tuma and Hannan, 1984). In order to model the effects of organizational and environmental characteristics on the death rate, we used the Gompertz model of the death rate, r-it) = exp[pX^(f)]exp[-/tl where r^it) is the rate of death for organization j, Xj is a vector of independent variables measured for each organization for each year over its lifetime, and -y is the coefficient of organizational age. This specification constrains the predicted rate to be non-negative (a desirable feature, since negative rates are meaningless) and separates age dependence from the effects of the Independent variables (see Carroll, 1983), Note that the model is nonlinear. This means that the absolute effect of each independent variable varies over its range. Furthermore, each variable affects the rate multiplicattvely, so care must be taken in interpreting these estimates. To estimate this model, we used Tuma's (1979) maximum-likelihood program, RATE, The procedures used in this program have the advantage of incorporating into the likelihood calculations what is know about firms that do not die during the observation period. In this way, the right-censoring problem inherent in these data is overcome. ANALYSIS Organizational Characteristics The variables used in the analysis are defined in Appendix B. Table 2 shows maximum-likelihood estimates of various organizational factors on the death rate, using the Gompertz model. Model (1) estimates age dependence in the absence of any other controls. The significant negative effect indicates that the death rate of these companies declines with age, a finding widely observed in organizational populations and know as the liability of newness (Freeman, Carroll, and Hannan, 1983). Models (2) and (3) introduce the effects of dummy variables for whether each organization was commercial or mutual, issued stock, or offered long-distance service. As one would expect, the long-distance providers have lower death rates, as do companies financed by stock issue. Two other effects of the long-distance and stock variables are noteworthy. First, these controls reduce the size of the age effect; it is no longer statistically significant. Second, with these controls, commercial firms show a statistically significant higher death rate than mutuals. Models (4) and (5) show that the natural logarithm of company size has a statistically significant negative effect on the rate of death. The effect of size makes the long-distance variable not significant, suggesting that the earlier long-distance 407/ASQ, September 1987 Table 2 Maitfmuni-UkeHhood Estimatm of the Effects of Org«nizati(Hial Chnractaristics on the Death Rate* Independent variables Constant (1) (2) (3) -3.376* (.21001 -3.422* (.2144) .4599 (.3470) -2.907* (.2349) 1.633* (.4561) -1.068* (.2672) -1.650* (.5697) Commercial Stock Long-distance Log size in telephones Log market share Left-censored Age Df -.0763* (.0285) 7.85 1 Models (4) -1.807* (.3842) 1.545* (.4341) -.8261* (.2777) ~ .3308 (.6326) -.5042* (.1501) (5) (6) i7) -1.721* (.3411) 1.415* (.3644) - .8283* (.2754) 4.292 (3.344) 1.109* (.3992) -.9546* (.2803) -1.701* (.3455) 1.520* (.4709) -.8380* (.2763) -.5450* (.12611 -1.086* (.3269) .5679 (.3159) - .5569* (.1305) -.0789* (.0286) -.0488 (.0297) -.0385 (.0294) - .0373 (.0291) 9.43 2 37.61 4 48.73 5 48.45 4 .0017 (.0350) 51.61 5 -.1966 (.5716) - .0342 (.0304) 48.57 5 * p < .05. • Standard errors are in parentheses. effect was spurious. Model (6) includes the effect of log market share in Model (5), but it does not improve the model. Model (7) includes in Model (5) a dummy variable equal to 1 for all companies that were founded before 1900, when the observation period begins. Such left-censored companies might have lower death rates, since they are already "survivors" at the point when the study begins. However, this variable also is not significant. Consequently, we used Model (5) as the baseline with which to search for competition and mutualism. Density Dependence Table 3 shows re-estimates of Model (5) with various specifications of population density. Models (8) through (11) include density terms measured for all companies in the sample, making no distinction by organizational form. The main effects of total density are not significant here—only the squared term shows a significant effect. Although the negative sign on this term might indicate mutualism, the lack of a significant main effect casts doubt on the credibility of this interpretation. Models (10) and (11) are specified with local and non-local density measured separately. Local density is never significant. Non-local density is significant, but only with a quadratic specification. The positive main effect of non-local density in Model (11) indicates competition, not from neighboring companies, but from companies in other counties. The negative squared term suggests a self-damping density effect, with competition increasing at a decreasing rate as the number of companies in other counties grows. Models (12) through (16) distinguish between the densities of the two organizational forms. Model (12) includes for each organizational form the main effects of local and non-local den408/ASQ, September 1987 Competition and Muftiaiism Table 3 Maidmum-Ukalihood Estimates of the Effects of Population Density on the Death Rate* Independent vanables (8) (9) 00) 01) Models 02) 03) 04) 05) 06) Constant -2.504* - 12,57* - 2 - 3 5 1 " --8,738* -9-577* -9,577" --11 -37* - 9 , 0 8 1 " -8.735" (.9894) (3.844) (3,102) (3,586) (.9819) (6-014) (3-896) (3.433) (2-683) 1.543* 1.157" Commercial 1.553* 1.297* 1,284" 1,131" 1.131" 1.103* 1.179* (.3923) (.3936) (.3902) (.3958) (.3906) (.3961) (.3886) (.3991) (.3941) Stock -.7869" -.9843* -.8040*- -1-043" -1.089" -1.089* -1,144" -1.086" -1.062" (.2834) (,2796) (-2855) (-2797) (.2797) (,2798) (.2783) (,2795) (-2834) Log size - .5572" - ,5256* - .5700* --5513" -,5435" - -5435" - .5478* - ,5499" - .5442" (,1261) (.1304) (.1339) (.1349) (.1248) (-1283) (,1241) (-1327) (-1333) Total density .0050 .1480 (-0764) (.0058) (Total density)2/i000 - .4898* (-2428) .0072 Non-locai density .1821" (-0063) (.0683) (Non-local density)2/100[ --9179" (.3361) ,0000 -.0106 Local density (.0086) (-0579) (Local density)2/i 000 -.1859 (.5094) .2707" .2707 .2084* .2749" ,3415* Non-local density. commercials (.0850) (,3604) (-0901) (,0826) (.0852) .0000 (Non-local density. (17.57) commercials)2/1000 ,0198 Non-local density. ,0198 .0198 .1312 .0240" (.0674) (.0119) (,0112) mutuals (.0119) (.0119) (Non-local density. - .6568 (,3757) mutuals)=/1000 ,2671" ,1811 .1485 .3465* Local density, ,2671" (.0850) (-0850) (.0966) (,3616) (-0925) commercials 6386 (Local density. (18.93) commercials)^/! 000 .0075 -,0119 .0069 -,1310" Local density, .0075 (.0164) (.0138) (,0632) mutuals (.0136) (-0142) 1 -437" (Local density. mutuals)2/1000 (.6690) .0113 Age - ,0504 -.0157 - .0479 -.0143 .0112 ,0136 .0112 .0128 (.0329) (,0352) (.0329) (.0340) (.0361) (,0361) (-0357) (.0361) (,0358) X^ Df 49.28 5 56.67 6 49,88 6 61,76 8 65,84 8 65.84 9 69,24 9 65.96 9 70,40 9 * p < .05. • Standard errors are in parentheses sity. Al! density coefficients are positive in these models, indicating competitive effects. However, only the effects of commercial density, both local and non-local, are statistically significant. Models (13) through (16) re-estimate Mode! (12). each time with a different squared density effect included. Models (13) through (15) do not improve statistically over Mode! (12). Model (16), however, shows statistically significant effects for al! density measures when a quadratic term for mutual local density is included. This model clearly improves over Mode! (12). Hence, this mode! is the best specification of the effects of organizational characteristics and population density on the death rates. The non-local density effects in Model (16) are positive for both mutual and commercial density. This indicates diffuse 409/ASQ, September 1987 competition generated by each organizational form. The nonlocal density coefficient for the commercial companies is fifteen times larger than that for the mutuals. This suggests that an individual commercial company generated dramatically stronger diffuse competition than an individual mutual company, especially since these effects are exponential. However, mutual companies were far more numerous. Thus, the mutual organizational form as a population actually generated stronger competitive pressure than that implied by these coefficients. To see this, compare the multiplicative effect of each density measure evaluated at its mean: death rates are increased about thirty times when commercial non-local density is at its mean and about ten times higher when mutual non-local density is at its mean,* Based on these calculations, the commercial form, as a population, generated diffuse competition about three times stronger than did the mutual form. Perhaps the most interesting estimates in Model (16) are those for local density. The local density effect for commercial companies is positive, indicating that these companies were responsible for direct competition. The effect of local density for mutual companies, however, is nonmonotonic and requires more careful interpretation. Figure 3 plots the predicted effect of mutual local density in terms of the multiplier of the rate. Note that the prediction curve bends, changing direction within the range of the observed data. This means that as the number of mutuals in any company's immediate surroundings increased, that company's death rate decreased. Hence, while the mutuals competed with companies Figure 3. Estimated affect of the number of mutiial companies in the same county on the death rate. (Vertical lines enclose the observed range.) 0,75- O0.50In the Gompertz model, the multiplicative effect of any one variable on the death rate, knovi/n as the "multiplier of the rate," varies over the range of that variable according to the function explpX], where X is the independent variable and p is its estimatai coefficient (see Tuma and Hannan. 1984), We evaluate the non-local density effects of Model (16) v\/ith each density variable equal to its mean value: 10 for the commercials and 94 for the mutuals. The estimated commercial nonlocal density multiplier is therefore exp[.3415 X 10] = 30.42, The multiplier for mutual non-local density is estimated to be expl.0240 x 94] = 9,54- 0.25- 0.00-1 0 5 10 15 20 25 30 35 40 45 50 55 60 65 70 75 80 85 LOCAL DENSITY OF MUTUAL COMPANIES 410/ASO, September Competition and MutuaUsm in other counties, they were mutualistic with their more immediate neighbors. As the local density of mutuals became increasingly large, however, its effect on the death rates changed, becoming more competitive at very high levels. In fact, had the local density term peaked at just a few mutual companies higher than its maximum of 77, the overall effect would have become competitive, moving the multiplier above unity. For immediately neighboring mutual companies, then, this analysis replicates Hannan and Freeman's (1988b) Ushaped density effect. Two potential objections to Mode! (16) have also been tested. First, the possible effects of the organizational size distribution are not included in the model. This might be especially important because organizations can fill the carrying capacity of the environment by expanding in size as well as by proliferating, Such a process seems especially likely for an industry with a mediating technology, since there is a premium on extensiveness. However, in a re-estimation of Model (16) not shown, total industry size (which is equivalent to density weighted by size) was not significantly related to the death rate. Similarly unremarkable was an equation that included a measure of the sum of the squared deviations of each company's market share from the mean market share, which when summed with the reciprocal of density is the wellknown Herfindahl index of industry concentration (Adelman, 1969). The specification in Model (16), therefore, cannot be improved by including measures of the size distribution of the industry. The other possible objection to Model (16) is that the estimated density effects may actually be the spurious result of unmeasured environmental factors. In models not shown here, we re-estimated Model (16) repeatedly, each time controlling for a different environmental variable. The main effects of each of the following variables failed to show a statistically significant relationship to the death rate: county size in square miles, number of farms, indexed farm value, number of asses per county, number of cattle per county, number of swine per county, indexed average wage per worker, number of dwellings, township population, and rural population. These variables are also not significant when interacted with organizational form. Remarkably, the estimates of the density model show little sensitivity to these controls. The viability of these organizations evidently depended on their own characteristics and on their interdependencies with other companies, but very little on the resource environment. Interpretation Model (11) suggests that only diffuse competition occurred among these companies, but this finding conceals the more complex pattern of interdependence that occurred between organizational forms. Both the mutual and commercial forms generated diffuse competition, but the commercial form's effect was three times that of the mutual form. The commercials also competed directly with neighboring companies. In contrast, the mutuals lowered the death rates of their neighbors, although this effect reversed itself at high density levels. These findings are consistent with a hypothesis of community-level competition: networks of mutual and commercial 411/ASQ, September 1987 companies, united as interdependent communities, may have competed with other such networks. Such high-level competition could explain why both mutual and commercial companies increased the death rates of geographically removed companies. Furthermore, the stronger diffuse competition brought on by the commercials supports the idea that they were the dominant form in these communities, driving the competitive movement into the resource space of other networks. Locally, the mutual form was nonthreatening, apparently connecting on a regular basis with other companies. However, at high enough numbers, this mutualism gave way to direct competition as it became impossible to avoid encroaching on the markets served by other companies in the community. Finally, the fact that the commercial form atso competed locally is again evidence of its dominance. Members of the dominant population hold and wield power within the community as well as against others (Hawley, 1950: 221). Ideally, the community competition hypothesis could be tested directly by analyzing the survival implications of actual network interconnections. Unfortunately, however, complete data on interconnections are not available. Thus we are forced to rely on two kinds of indirect evidence: (1) descriptive accounts drawn from the historical record and (2) statistical tests of theoretical implications of the community concept. Atwood's (1984) detailed historical research on this area contains much evidence consistent with the community competition hypothesis. First, these companies did commonly connect with each other. Atwood (1984) found 98 published records of such interconnections in these three counties. Second, interconnections were geographically based and hierarchical, resembling an ecological community. Atwood (1984: 175) described clearly the way this worked: Most mutual lines eventually joined a mutual exchange service located in a neighboring toyvn or village. This exchange inevitably made connections, often grudgingly and frequently interrupted, with the commercial systems located in the counties' major towns. If a mutual exchange was large enough, it might also connect with a toll service on its own. If the mutual exchange was not large, however, the company would often rely on the commercial system's toll services for long distance connections. Atwood (1984: 432) also provided a stylized diagram of such a network. Third, while connecting localized groupings of companies, the interconnection network was far from comprehensive for these counties (Atwood, 1984: 175). Thus, the networks were not rationally integrated with each other, as would be the case if the whole area constituted a single ecological community. Fourth, the history of interconnections in this area is replete with feuds, disputes, and conflicts of the sort that would be expected if companies were encroaching on each other's territory. Another kind of indirect evidence of the community competition hypothesis relies on two key theoretical implications of the argument. First, if the two organizational forms did in fact work together in communities, then each would have played a distinctly different role in the dynamics of the industry. Second, such a division of labor would have resulted in symbiosis between the forms, since, as complements, each form 412/ASa September 1987 Competition and Mutudism would improve the service provided by the other. We investigated the first implication by looking for distinct patterns of growth for each form. We then looked for symbiosis between the forms by comparing how each affected the technological capability of the other. Organizational Growth In the more urban, densely populated areas, telephone service expanded intensively within a limited geographic area. In this environment, the commercial organization was capable of growing in size as the industry grew. By contrast, industry expansion was geographically extensive in the more widespread, sparsely populated rural areas where the mutual companies operated, In this fragmented environment, industry growth occurred primarily by the proliferation of mutual companies rather than by their individual expansion. Each of these companies was less capable of growth but distinctly capable, for both institutional and technical reasons, of serving a geographically isolated pocket of subscribers. Figure 4 contrasts the different total growth patterns for each form (contrast with Figure 1). The number of telephones in the commercial niche expanded rapidly, while the numbers in the mutual niche grew slowly. Figure 4. Industry size by organizationai form. 150000140000130000120000- Commercial Companies 110000-1 ^ 100000- X 90000- S 80000- Mutual Companies 70000LU m D 6000050000400003000020000100001900 10)5 1910 1915 1920 YEAR White these aggregate pattems of growth clearly show differentiation between the two forms, it remained to be seen whether indivkiuai companies of the two kinds grew in response to different stimuli. To examine this issue, we modeled tJie growtii rates for organizations of each form separately, using as a iaaseline nrjodel the power function Sfi ^tX' where S r^resents company size. This functional form worked wel! in Fischer and Carro!i's (1988) models of the diffusion of the te!ephone in the entire industry during this period. We inc!uded in the mode!, as regressors, the variables used above measuring organizationa! characteristics and population density. Because apparent regu!arities in form growth and decline may simp!y be the consequence of regression to the mean (Leonard, 1986), we also included as a regressor the ratio of average size to organizational size (by form). A positive coefficient was expected on this term. The size distribution of these companies is s!<ewed throughout the period under study. Numerous ana!yses of s!<ewed size distributions (e.g., Ijiri and Simon, 1977) suggest that the error term in the model is iognormally distributed. By transforming this equation to its natural logarithm, we obtain the equation logS« = which is linear in the parameters and includes a normally distributed error term and can therefore be estimated using linear regression. We estimated the parameters of this model using ordinary-least-squares techniques on the poo!ed cross sections of the samp!e. By poo!ing repeated observations on the same companies, however, the assumption of independence from observation to observation is !i!<ely violated and thus can lead to biased estimates (Judge et al., 1980), To test for this possibility, we also estimated a "fixed-effects" form of this mode!, in which a separate intercept term is included for each organization (Judge et al., 1980), Another possible source of bias in estimation is samp!e selection through organizational death. If "shrinking" organizations are more like!y to die, they will fa!! from the samp!e without their size reduction affecting the estimates. To accommodate this possibility, we a!so estimated the mode! using Heckman's (1979) two-stage method. As Heckman explained, the sample selection bias due to attrition (organizational death) is equal to u \ , where \ depends on the characteristics of dying organizations and a is a coefficient capturing the effect of K in the growth model. To estimate X, we first estimated a probit model of organizational mortality using the variables in the best death model (16). Then we estimated the growth model, including the estimate of X as a regressor. using ordinary-least-squares. Table 4 reports the estimates of the growth model, using the three estimation procedures. Each model controls for organizational age. whether a company issued stock, and whether it offered long-distance service. As one might expect, both mutual and commercial long-distance providers grew more, but the other organization-!eve! variables are nonsignificant in almost ai! specifications. By contrast, the term testing for regression to the mean is positive!y related to growth for both forms and statlstica!ty significant in a!! but one specification. These mode!s a!so inc!ude the effects of !agged deaths of companies of each form. One might expect a positive relationship between lagged death and growth, reflecting the process of renewal in the industry. If not explicitly controlled, this renewal process could be captured spuriously in the coefficients of density. Interestingly, we find evidence for such 414/ASQ, September 1987 Competition and IMutualism Table 4 Models of Growth in Numbw of Telephones for Commercial and Mimial Companies* Commercials Mutuals 1 Independent variables Constant Lagged size (S'T) Stock Long-distance Age (Average size, commercials)/size OLS (17) .2499 (.1945) .9936* (.0127) .0082 (.0437) .4590(.0833) - .0024 (.0057) .0013(.0003) Fixed effects (18) Sample selection (19) OLS (20) .9773* (.0126) 0613 (.0434) 1399(,0450) - .0027 (,0058) .1787 (,1936) .9952' (.0126) .0379 (.0451) .4850* (.0763) -.0018 (.0054) .0004 (.00023) Non-local density, mutuals Local density, commercials Local density, mutuals No. of deaths, commercials No. of deaths, mutuals .2494* (.0754) 1.004* (,0085) ,0197* (.0102) ,0440* (.0204) -.0011 (.0012) 1,015* (.0079) .0191 (.0102) .0473* (.0204) - ,0011 (.0012) ,2426* (.0774) 1,003" (.0087) .0166 (.0133) .044 T (.0204) -.0012 (,0012) ,0112* (.0029) .0148* (.0027} .0119* (,0034) -.0091 (.0093) - .0028* (,0008) -.0016 (,0101) - .0040* (.0011) -.0108 (.0096) - .0028' (,0008) - .0037 (.0104) - ,0030* (.0011) - .0074 (.0091) -.0032* (.0008) .0001 (.0100) - .0037* (.0011) - .0054* (.0026) -.0010* (.0002) - .0043 (,0027) -.0017* (,0003) - .0055' (,0026) -.0010* (.0002) -.0041 (.0027) -,0018* (.0003) - .0048 (.0030) -.0010* (.0003) -,0038 (.0031) -.0017* (.0003) -,0168 (.0232) ,0063 (.0075) -.0223 (.0240) .0044 (.0077) - .0246 (.0232) .0039 (,0075) ,2705* (,1325) -.0011 (.0062) .0044* (.0019) - .0008 (.0062) ,0045' (.0019) - .0009 (.0062) .0045* (.0019) - .0702 (.1909) .98000 308 ,97864 308 .98019 308 .95888 2214 .95865 2214 .95888 2214 X Number of spells Sample selection (22) .0012* (.0003) (Average size, mutuats)/size Non-local density, commercials Fixed effects (21) • p < .05. * Al! models are of the form S^ = S\i exp[p'X]t, with all independent variables lagged one year. Standard errors are in parentheses. a renewal process only for the mutual form, an effect that is robust across all three specifications. Apparently, mutual deaths led to growth among other mutual companies in the next year. The commercials show no lagged death effect, but deaths do affect the model. In Model (19), the coefficient of X is positive and significant, indicating positive sample selection bias due to mortality among the commercials. The firms that do survive in the more hazardous commercial niche tend to be "growers," Both the local and non-local density measures for mutual companies are negatively related to growth for each organizational form. This finding is robust and suggests strongly that mutual companies impaired the grov^h of alt other companies, both their neighbors and those in other counties. The commercial companies, meanwhile, do not appear to have the same effect. There is a significant negative relationship between non-local commercial density and mutual growth, but this effect is not robust. 415/ASO, September 1987 Mutual and commercial companies therefore differed not only in terms of their formal goals, ownership structures, appeal to subscribers, and scale of operation, but also in terms of their dynamics of growth. Each form flourished in and reinforced the characteristics of a different niche: the mutuals in fragmented, rural areas and the commercials in more densely populated areas. Such sharp differentiation is consistent with the community-competition hypothesis. Long-Distance Service If these two organizational forms cohered in ecological communities, then the presence of one would likely have increased the ability of the other to provide extensive telephone service. Operationally, this implies that each fonn would increase the probability that the other offered long-distance service. Commercial companies would give mutuals access to sophisticated long-distance trunking equipment, and mutuals would give commercials the ability to reach widespread and sparsely populated rural areas. To test for this kind of symbiosis, we modeled the probability of a company providing long-distance service in any given year, using probit models. Probit estimation generates unbiased and meaningful (between 0 and 1) predicted values of a probabilistic dependent variable (Maddala, 1983). Table 5 reports these estimates. 6 Each of these terms shows the effect of di^sity on the probability that a commercial company will offer long-distance service relative to the prtrirability that a mutual company will. The positive commerdal x mutual density effect, therefore, predicts that as mutual companies are greater in number, a commercial company is increasingly likely to offer long-distance service, relative to a mutual company. The negative commercial x commercial density effect indicates that as commercial corr^anies are more numerous, a commercial company is decreasingiy likely to offer long-distance service, relative to a mutual company. This means that higher commercial density makes mutual companies increasingly likely to provide longdistance service relative to a commercial. The prcdiabiJity predictions in a probit model vary over the explanatory variables according to the cumulative normal distribution, * . Tt^refore, the magnitude of a variaWe's effect (say, the effect of xtl varies over the range of x* according to the standard normal density function, since a/axt*(x'Pt = *(x'P)P(t (see Maddala, 1983). Intuitively, this means that the effect of Xk increases as the predicted prcAability moves up from 0. peaks at p = .5, and decreases as p approaches 1 asymptotically. Each density effect was evaluated at its strongest point, where the prs^cted probability egu^s .5. At Uiis point, •(x'p) = 1/V2w. which then must be rruiltipted by the coefficient of density to detwmine the ap¥)roxrmate effect of a one-urat increase in density on the pre(Scted probability. Not surprisingly, commercial companies were more likely than mutuals to offer long-distance service. Year of founding shows a curvilinear relationship with providing long-distance service. This is probably because the earliest telephone companies (left-censored in these data) were commercial firms and date as far back as the Bell patent monopoly. These firms tended to patent and manufacture their own equipment and were some of the first pioneers of long-distance telephony (Wasserman, 1985). Later entrants into the industry were able to purchase their equipment from manufacturers that became numerous in the early years of this century (U.S. Federal Communications Commission, 1938). However, these early manufacturers offered only basic equipment, so telephone companies in the early wave of foundings were less likely to offer long-distance service. As time passed, the availability of long-distance equipment increased dramatically, making late entrants more likely to offer such service. The significant curvilinear effect of year of founding across all models in Table 5 supports this scenario. Models (28) through (32) suggest that the mutual and commercial forms were symbiotically related, each improving the other's chances of providing long-distance service. The cross effects of density on each form's probability of providing long-distance service are significant across these models. Evaluated at its strongest point, the positive commmercial x mutual density effect indicates that two additional commercial companies increased by 10 percent a mutual's relative probability of offering long-distance, service. The negative commercial x commercial density effect indicates that the mutuats had a similar, but much weaker, effect on a commercial's relative probability of offering long-distance service; it took about 30 additional mutuals to increase a commercial's probability by 10 percent.* (But again, recall the greater 416/ASQ, September 1987 Competition and Mutualism Table 5 Probit Estimates of the l^ovision of Long-Distance Tei^hone Service* Independent variables Constant Commercial Stock Calendar year (23) (24) -1,439* -15,34 (,0662) (13,78) 2,904* 2,920* (,1068) (.1049) - ,0477 (,0769) ,0073 (,0073) Organizational age Year founded (26) Models (27) (28) (29) (30) (31) (32) 1,822* (,0653) 2.931* (,1078) 17009* (3685) 2.827* (,1093) 16931* 17461* (3688) (3803) 2,827* 4,389* (,1096) (1.078) 20774* (4511) 4.260* (1,102) 18548* (3935) 4,366* (1,091) 20882* (4686) 4,277* (1.103) 20875* (4627) 4,150* (1.103) ,0449* (,0065) ,0178* (,0079) -17,84* (3.872) 4.678* (1.017) .0071 (,0264) -17.75* (3,874) 4,651* (1,018) -,0072 (.0280) -21,87* (4,815) 5,727* (1.264) ,0203 (,0604) -21.89* (4,856) 5,727* (1.275) (25) (Year founded)^/ 1000 Total density. mutuals Total density. commercials Commercial x mutual density Commercial x commercial density ,0119 -,0471 -.0626 (.0273) (,0303) (,0439) -18.31* -21,68* -19.38* (3.995) (4,735) (4,132) 4.800* 5,667* 5.060* (1.049) (1,243) (1,085) ,0004 -,0015 (,0031) (,0034) -.0195 -,0052 (0317) (,0332) ,0078* (,0034) -.1275* (,0467) Land - ,0027 -,0045 -.0019 -.0064 (.0035) (.0035) (,0034) (,0045) .0046 ,0372 ,0001 .0251 (,0339) (,0361) (,0340) (,0427) .0071* ,0081* .0073* .0077* (,0035) (,0035) (.0035) (,0035) -,1191* -.1295* -.1207* -,1172* (.0471) (,0477) 1,0474) (,0475) -44.60* (9,181) - 5,647* (1,405) ,0001 (,0001) Farms Dwellings Indexed fami value Indexed average wage Township population Rural population Df 60.41 (34.52) 3.987 (3.427) 10,96* (4,693) 1,243 (,8573) 2,267 (4,915) ,0888* .0071 (,0155) (.1139) -,1830* -.9372 (,0486) (,5378) 1204,9 2 1205,6 2 1254,1 2 1311.9 4 1312,4 6 1327,0 8 1371.2 11 1343,4 10 1379.9 10 1383,0 13 *p< ,05. * Standard errors are in parentheses. number of mutuals.) Despite differences in scale, the estimates strongly suggest that the two organizational forms served each other symbiotically. The presence of either form improved the ability of the other to provide extensive telephone service. CONCLUSION We began by suggesting that the environment of an organization could be determined empirically by examining the interdependencies between an organization and other organizations. The suggestion that such a research strategy was possible was not intended to mean that it would always be simple. Indeed, there were strong theoretical reasons to think that interdependencies might be of different kinds and at different levels of analysis. 417/ASa September 1987 Our exploratory analysis of the early telephone industry shows some of the complexities that can be involved in the study of organizational interdependence. Initially, we found evidence of organization-ievel diffuse competition amor>g telephone companies. By distinguishing between the industry's two predominant organizational forms, mutuals and commercials, we found other evidence of a more complex population-level interdependence. The mutual form flourished in geographically dispersed rural areas. This form expanded in its niche by proliferation in number rather than by growth in the sizes of individual companies. Mutuals were commensal with neighboring companies, decreasing their death rates except at very high density levels. With respect to commercial companies, the mutuals were symbiotic, their presence increasing the probability that the commercials would offer long-distance service. For commercial companies, a different pattern was found. This form expanded by the grov^rth of individuals rather than by proliferation, and it did so largely in the more densely populated areas. This form appears to have been ecologically dominant, controlling resources important to the industry, such as access to larger technological networks. As the dominant form, the commercials were powerful within their communities, their presence increasing the death rates of neighboring companies. However, they were also in a symbiotic relationship with the mutuals, their presence increasing the probability that the mutuals would offer long-distance service. The commercial niche itself was relatively hazardous, but with high growth returns for the survivors. The two forms were highly differentiated, both environmentally and in their relations to other companies. When combined with historical accounts and the apparent symbiosis between forms, the evidence supports the assertion that these forms together formed coherent organizational communities. Further, the finding that companies of both forms caused higher death rates among companies outside their local areas is very difficult to explain without resort to a higher level of analysis. Interestingly, the apparent resilience of telephone companies to environmental factors also supports the community hypothesis. As Hawley (1986: 44) pointed out, with increasing differentiation (as between these two organizational forms), members of a community become more dependent on one another and less dependent on their immediate environment for resources. That appears to have been the case for telephone companies. Taken together, these findings agree with those who argue against a strict conceptual separation of individual organizations and their environments (Weick, 1979; Granovetter, 1985; Perrow, 1986). However, they also show that the problem of environmental embeddedness can be overcome, at least as it concerns other organizations. The solution, as advocated by Hannan and Freeman (1977), is to consider and investigate higher levels of analysis, including organizational populations and communities. We have demonstrated that such an approach is feasible, even within the demands of systematic empirical research, and that ecological theory provides a powerful means of interpretation. 418/ASQ, September 1987 Competition and Mutualism REFERENCES Adelman, M. A. 1969 "Comment on the 'H' Concentration Measure as a numbers equivalent-" Review of Economics and Statistics, 51: 99-101, Astley. W. Graham 1985 "The two ecologies: Microevolutionary and macroevolutionary perspectives on organizational change." Administrative Science Quarterly, 30: 224-241. Atwood, Roy 1984 "Telephony and its cultura! meanings in southeastern Iowa, 1900-1917." Unpublished Ph-D. dissertation, University of Iowa. Brittain, Jack W., and Douglas R. Wholey 1988 "Competition and coexistence in organizational communities: Population dynamics in electronic components manufacturing." In Glenn R. Carroll (ed,). Ecological Models of Organizations: 195-222. Cambridge. 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Carrol! (ed.). Ecological Models of Organizations: 127-152. Tuma, Nancy Brandon 1979 Invoking RATE, 2d ed. Menio Park, CA: SRI International, Tuma, Nancy Brandon, and Michael T. Hannan 1984 Social Dynamics: Models and Methods, New York: Academic Press. U.S. Bureau of the Census 1975 Historical Statistics of the United States. Washington, DC: U.S. Government Printing Office. Weick, Karl E. 1979 The Social Psychology of Organizing, 2d ed. Reading, MA: Addison-Wesley. Appendix A: Foundings and Deaths by Organizational Form Mutual Companies Foundings Dissolutions 1900 1901 1902 1903 1904 1905 1906 1907 1908 1909 1910 1911 1912 1913 1914 1915 1916 1917 12 67 39 15 13 5 7 4 17 3 6 a 7 0 3 3 0 0 2 3 7 8 1 1 6 1 5 2 1 2 3 CJl 1938 Proposed Report—Telephone Investigation. Washington, DC: U,S, Government Printing Office. Wasserman, N. 1985 From Invention to Innovation: Long Distance Telephone Transmission at the Turn of the Century, Baltimore: Johns Hopkins University Press. CJl U.S. Federal Communications Commission 3 1 0 Commercial Companies Foundings Dissolutions 8 3 3 1 1 1 0 0 0 1 0 0 0 0 0 0 0 0 0 0 0 1 2 1 0 1 2 2 0 1 0 0 0 0 0 0 Appendix B: Definitions of Variables Company Variables Data on the following variables are from the State of iowa Executive Council's Annual Assessments of Telephone and Telegraph Properties (Des Moines, lA: Iowa State Printer), published annually during the period under study. Most of these data were originally collected by Roy Atwood (1984). Mutual telephone companies. These companies were owned by their subscribers. Two designations are found in the tax records, "pure mutual" and "stock mutual" companies. The iatter form was still owned by its subscribers, but through stock issue. One additional type of company, shown in the records as "purely private," was also considered in this study to be mutually owned. These companies were normally small point-to-point farmer tines established, owned, and operated by the subscribers themselves. Commercial telephone compar^ies. Two types of commercial firms were shown in the records, "private commercial" and "stock commercial." They differed over whether they were publicly or privately owned, but all were business organizations formally operated to make a profit. Organizational mortality. Companies were considered dead once they no longer were recorded in the tax records. No distinction was made between dissolution by merger and outright failure. Mortality was recorded for the final year of known operation. Year founded. Companies were considered founded in the first year they appeared in the tax records. Long-Distance service companies. There existed a hierarchy of service levels in the industry during this period. "Basic service," consisting of point-to-point connection and operator-assisted connection, was the first level of service provided. "Exchange service," both automatic and manual, provided more comprehensive, although still local connection, "Toll service" provided subscribers with long-distance transmission through special trunks to areas outside their local service area. The long-distance/local distinction in this study was made according to whether firms offered toll service. Stock-issuing companies. This distinction was made according to whether or not stock was issued by a company to finance capital investments. See "mutual companies" and "commercial companies," 420/ASQ, September 1987 <k>mpetition and Mutualism Log organization size. This variabte is the natural logarithm of the number of telephones recorded for each company for each year it operated. Data were missing on some companies for some years and were linearly interpolated. where possible from other years' tax records. Log organization market share. This variable was constructed by dividing the size-in-tetephones measure for each company for each year by total number of telephones for all companies in that year and then computing the natural logarithm of this ratio. Organizationai age. Measured in years, this variable was computed by subtracting year of founding from current calendar year for each company in each year of operation. Total density. Computed by adding the total number of companies (or the total number by form) in operation in any or all of Johnson. Iowa, and Washington counties of southeast Iowa during each year of the study. Local density. Each company reported its counties of operation to the tax authorities in each year of its operation. This variable was computed for each company in each year by adding the total number of companies (or the total number by form) in operation in the company's county of operation. For multi-county companies, the average number in its counties of operation was computed. Non-local density. This variable was computed by subtracting local density from total density for each organization in each year of operation. Environmental Variables Data on these variables were found in the decennial census of 1900, 1910, and 1920 for each of Johnson, Iowa, and Washington counties. Values were linearly interpolated for intervening yearsLand. Size of each county measured in square milesFarnts. The number of farms in each county. Interpolated values were rounded to whole numbers. Indexed farm value. Computed by dividing the total dollar value of all farm property in each county by the number of farms in that county. After interpolation, values for each year were indexed by the consumer price index for that year found in U.S. Bureau of the Census (1975). Number of asses, cattle, and swine per county. Each variable shows the number of each of these farm animals in each county. Values were interpolated and rounded to whole numbers for intervening years. Indexed average wage. Computed by dividing the total dollar wages paid in each county by the number of wage earners in that county, After interpolation, values for each year were indexed by the consumer price index for that year found in U.S. Bureau of the Census (1975). Dwellings. The total number of dwellings in each county. Interpolated values were rounded to whole numbers. Urban population. This variable does not reflect the standard census definition for urban population, which would exclude most of the townships in these counties, instead, we added the census figures for township population to the urban population for each county. Interpolated values were rounded to whole numbers. Rural population. Computed by subtracting the recorded and interpolated urban population variable (above) from the recorded and interpolated total population for each county. 421/ASa September 1987