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Contextual Models of Electoral Behavior: The Southern Wallace Vote*

Published online by Cambridge University Press:  01 August 2014

Gerald C. Wright Jr.*
Affiliation:
Florida Atlantic University

Abstract

Many studies have sought to investigate contextual influences on individual electoral behavior using aggregate data. The shortcomings of this approach are discussed, focusing on the relationship between black concentration and southern white support for George Wallace for president in 1968. Through combining aggregate and individual-level data and comparing a series of models, black concentration is found to increase white support for Wallace. Intraregional differences in the relationship between white support for Wallace and local black concentration are equalized when contextual influences at the state level are brought into the analysis. Black concentration contextual effects are independent of those of urbanization, education, or residence in Wallace's home state of Alabama. Relative primary group support for Wallace and relative issue proximity to Wallace are then shown to be the intervening variables linking contextual characteristics and electoral choice.

Type
Articles
Copyright
Copyright © American Political Science Association 1977

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Footnotes

*

Financial support for this research was provided by the National Institutes of Mental Health (#MH 26052-01). I wish to thank my colleagues Micheal Giles, Douglas Gatlin, Everett Cataldo, and David Britt for their helpful comments on an earlier version of this paper. Thanks also to Laura Irwin and an anonymous referee for useful suggestions, and to Barbara Higgins and David Kovenock of the Comparative State Elections Project for helpful editorial advice and for permitting me to use the data in this analysis.

References

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8 The relationship between black electoral participation and black concentration appears to be changing over time, and perhaps varies in different areas of the South. The relationship was negative throughout the South in the 1950s (Matthews and Prothro, “Social and Economic Factors and Negro Voter Registration in the South”), positive in Alabama in the 1960s ( Daniel, Johnnie, “Negro Political Behavior and Community Political and Socioeconomic Structural Factors,” Social Forces, 47 (March, 1969), 274280 CrossRefGoogle Scholar, and curvilinear in the late 1960s in Mississippi ( Kernell, Sam, “Comment: A Re-evaluation of Black Voting in Mississippi,” American Political Science Review, 69 (December, 1973), 13111315 Google Scholar.

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10 Ibid., pp. 47–49.

11 County-level variables are taken from U.S. Bureau of the Census, County and City Data Book, 1949 (Washington, D.C.: G.P.O., 1952), Table 3Google Scholar; County and City Data Book, 1972 (Washington, D.C.: G.P.O., 1972), Table 2Google Scholar. State-level variables discussed below are taken from U.S. Bureau of the Census, Statistical Abstracts of the United States: 1942, 64th edition (Washington, D.C.: G.P.O., 1943), p. 13 Google Scholar; Statistical Abstracts of the United States, 1973, 94th edition (Washington, D.C.: G.P.O., 1973), p. 29 Google Scholar.

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14 Matthews, and Prothro, , “Social and Economic Factors,” p. 28 Google Scholar.

15 Repeating the analysis that follows using the 1970 percentage black data does not affect the conclusion reached. The only difference is a consistent pattern of lower contextual effects. Also state percentage black, measured at each decennial census from 1900 through 1970, was correlated with white support for Wallace in 1968. The 1940 data yielded the highest of these correlations.

16 Wasserman, and Segal, , “Aggregation Effects,” p. 179 Google Scholar.

17 Two regions are used in the present study. Deep South states include: Alabama, Georgia, Louisiana, Mississippi, and South Carolina. The Marginal South (called the Peripheral South in CSEP publications) includes: Arkansas, Florida, Kentucky, Maryland, North Carolina, Oklahoma, Tennessee, Texas, Virginia, West Virginia, and Washington, D.C. For a discussion of the reasons underlying this division, see Black, Merle, Kovenock, David M. and Reynolds, William C., Political Attitudes in the Nation and the States (Chapel Hill, N.C.: Institute for Research in the Social Sciences, 1974), pp. 68 Google Scholar.

18 Blalock, Hubert M. Jr., “Causal Inferences, Closed Populations and Measures of Association,” American Political Science Review, 61 (March, 1967), 130136 CrossRefGoogle Scholar; Wright, Gerald C. Jr., “Linear Models for Evaluating Conditional Relationships,” American Journal of Political Science, 20 (May, 1976), 349373 CrossRefGoogle Scholar.

19 The slopes here, with a dichotomous (1,0) dependent dummy variable measuring voting for and against Wallace, may be interpreted as the average change in percentage voting for Wallace that would be expected from a change of one per cent in the local percentage black. Alternatively, the regression coefficients may be interpreted as the average difference in the probabilities of voting for Wallace between whites living in all-white areas and whites living in all-black areas. The latter interpretation is sometimes not quite as desirable because the estimated coefficients can imply probabilities greater than 1.0 or less than zero.

20 Ward, Joe H. Jr. and Jennings, Earl, Introduction to Linear Models (Englewood Cliffs, N.J.: 1973)Google Scholar. For an exposition of the regression techniques employed here using political science examples see Gerald C. Wright, Jr., “Linear Models for Evaluating Conditional Relationships.”

21 The criterion here for comparison of models will be whether a difference in their explained variance is statistically significant. The strategy followed is to first postulate a “full” model with K parameters to be estimated. Restrictions are then put on these parameters (i.e., assuming one or more is equal to zero, or that two or more parameters are equal to each other). These restrictions are incorporated into a “restricted” model with L parameters (where K > L).The test for the difference in models is explained in Ward and Jennings, and Wright, ibid.

22 The use of dichotomous dependent variables in multiple regression analysis is a matter of some controversy. The regression mode of analysis is chosen for its familiarity and for the nice substantive interpretation of the regression coefficients. Each of our models was estimated using multiple discriminant analysis and the results in terms of models retained, the relative importance of variables, and the significance of differences between models are identical throughout. See Ladd, George W., “Linear Probability Functions and Discriminant Functions,” Econometrica, 34 (October, 1966), 873885 CrossRefGoogle Scholar; Kort, Fred, “Regression Analysis and Discriminant Analysis: An Application of R. A. Fisher's Theorem to Data in Political Science,” American Political Science Review, 67 (June, 1973), 555559 CrossRefGoogle Scholar. Peter H. Lemieux, “Communications,” and Kort, Fred, “Communications,” American Political Science Review, 68 (March, 1974), 202205 Google Scholar.

23 The data presented in Table 2 and throughout the remaining analysis are derived from linear correlation and regression (e.g., W = a + b1C + e, where W is vote for Wallace and C is proportion black in the county; a and b 1 are to be estimated). Two nonlinear forms are hypothesized by Blalock, Hubert, Toward a Theory of Minority Group Relations (New York: John Wiley and Sons, 1967), pp. 143186 Google Scholar. The first is based on a theory of economic competition and posits a positive monotonically decreasing slope between racial discrimination and percentage black (i.e., W = a + b 1 log C); the second is based on a theory of political threat and predicts a positive monotonically increasing slope (i.e., W = a + b(C/1−C)). Both of these models were tested and found to yield no higher correlations than did the simpler linear model.

24 Key, , Southern Politics, p. 5 Google Scholar; Blalock, , Toward a Theory of Minority Group Relations, pp. 174175 Google Scholar.

25 Black, Earl, “Southern Governors and Political Change: Campaign Stances on Racial Segregation and Economic Development,” Journal of Politics, 33 (August, 1971), p. 713 CrossRefGoogle Scholar.

26 Wrinkle and Polincard, “Populism and Dissent,” and the literature reviewed therein.

27 Crespi, Irving, “Structural Sources of the George Wallace Constituency,” Social Science Quarterly, 52 (June, 1971), 124125 Google Scholar; Lipset, Seymour Martin and Rabb, Earl, “The Wallace Whitelash,” Transaction, 7 (December, 1969), 2325 Google Scholar.

28 The impact of Wallace's home state advantage was also checked in two additional ways. First, we began by regressing Wallace voting on the Alabama dummy variable and then added the variables of Models I through VI, as outlined above. Beginning with “Alabama” in the equation did not influence the results presented above in any notable way. Second, the analysis was repeated with Alabama voters completely excluded; the results were not changed.

Models I–VI were also re-run with Republicans and Independent leaning toward the Republican party excluded to determine if the larger percentage of Republicans in the Marginal South could be influencing the regional differences. The results, in all important respects, again remained unchanged.

29 The interaction between the state and local contextual effects was checked and the addition of a multiplicative interaction term does not add significantly to Model VI.

30 Coleman, James S., “Relational Analysis: The Study of Social Organization with Survey Methods,” Human Organization, 17 (Winter, 19581959), 2836 CrossRefGoogle Scholar.

31 Putnam, Robert D., “Political Attitudes and the Local Community,” American Political Science Review, 60 (September, 1966), 640654 CrossRefGoogle Scholar.

32 For a complete discussion of the procedures for constructing the relative primary group support index see Beardsley, Philip, “The Methodology of Electoral Analysis,” in Explaining the Vote, Kovenock, David M., Prothro, James W. and Associates (Chapel Hill, N.C.: Institute for Research in Social Science, 1973), Part I, pp. 5355 Google Scholar.

33 Beardsley, “The Methodology of Electoral Analysis” provides a rather complete discussion of the construction of relative issue proximity measures. A more thorough description and analysis of the particular items used here to construct the measure of relative issue proximity is contained in Wright, Gerald C. Jr., “Community Structure and Voting in the South,” Public Opinion Quarterly, 40 (Summer, 1976), 201215 CrossRefGoogle Scholar.

34 These three expectations follow from path analysis definitions of intervening models. For example, see Blalock, Hubert M. Jr., “Theory Building and Causal Inferences,” Methodology in Social Research, ed. Blalock, H. M. Jr. and Blalock, A. M. (New York: McGraw-Hill, 1968), pp. 175176 Google Scholar; Land, Kenneth C., “Principles of Path Analysis,” in Borgatta, Edgar F. (ed.), Sociological Methodology 1969 (San Francisco: Jossey-Bass, 1968), pp. 2933 Google Scholar.

35 The dotted line in Figure 2 indicates an expected relationship, but it is one that will not be explored here. Fortunately, for our purposes, it is not necessary to disentangle the effects of primary group support and issue proximity on one another; it will be quite sufficient if together these variables are found to be major mechanisms intervening between contextual factors and voting choice.