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25 Model 1.6 Model Summary Adjusted R Std. Error of R R Square Square the Estimate.773 a a. Predictors: (Constant),,,.7 ANOVA b : 213 Model 1 Regression Residual Total Sum of Squares df Mean Square F Sig a a. Predictors: (Constant),,, b. Dependent Variable: Model 1.8 (Constant) a. Dependent Variable: Coefficients a Unstandardized Coefficients Standardized Coefficients B Std. Error Beta t Sig : ) 094/0 + ( ) 139/ /0 = ( ) 095/0 +.

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27 :» :.1 : ) «.( (1386 ) 38-39» ( ) «2. A. F.Westwood (1965), Politics of Distrust in Iran, Annals of American Academy of political and Social Sciences, Vol. 358, p (1379).3 (1383).4. (1386) (1387 ) Peri K. Blind (2006), Building Trust in Government in the Twenty-First Century: Review of Literature and Emerging Issues. November 2006, pp unpan1.un.org/intradoc/groups/public/documents/un/unpan pdf..109 (1384 : ) : David Easton, A Systems Analysis of Political Life, (New York: Wiley, 1965), pp Blind, Op. Cit.

28 12. Richard L. Cole (1973), Toward a Model of Political Trust: A Causal Analysis, American Journal of Political Science, Vol. 17, No. 4 (November), pp : - Robert E. Lane, Political Life, (Glenco: Free Press, 1969). - Gabriel A. Almond amd Sidney Verba, The Civic Culture: Political Attitudes and Democracy in Five Nations, (Princeton, NJ: Princeton University Press, 1963). 14. William Mishler, Richard Rose, What Are The Origins of Political Trust, Comparative Political Studies, Vol. 34, No. 1, (February 2001), p Ibid., p Ibid., p Robert D. Putnam, Robert Leonardi, & Raffaella Nanetti, Making Democracy Work, Princeton, (NJ: Princeton University Press, 1993), p Robert A. Dahl, Polyarchy: Participation and Opposition, (NewHaven, CT: Yale University Press, 1975), p (1387 : ) : John Williams, Systematic Influences on Political Trust: The Importance of Perceived Institutional Performance, Political Methodology, Vol. 11, No. 1-2, 1965, pp Mishler and Rose, Op. Cit. 21. Marc J. Hetherington, The Political Relevance of Political Trust, American Political Science Review, Vol. 92, No. 4, 1984, pp

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