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Specification Issues in Proximity Models of Candidate Evaluation (with Issue Importance)

机译:候选评估邻近模型中的规范问题(具有问题重要性)

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摘要

The use of the proximity model to represent the relationship between citizens' policy attitudes and the positions of candidates on the issues of the day has considerable appeal because it offers a bridge between theoretical models of political behavior and empirical work. However, there is little consensus among applied researchers about the appropriate representation of voter behavior with respect to the measurement of issue distance, candidate location, or whether to allow heterogeneity in the weight that each individual places on particular issues. Each of these choices suggests a different, and reasonably complicated, nonlinear relationship between voter utility and candidate and voter issue positions which may have a meaningful influence on the substantive conclusions drawn by the researcher. Yet, little attention has been given to the best way to represent the proximity model in applied work. The purpose of this paper is to identify which forms of the proximity model work best, with particular consideration given to the identification of functional forms that are invariant to the choice of scale for the independent variables.
机译:使用接近模型来表示公民的政策态度与候选人在当日问题上的立场之间的关系具有很大的吸引力,因为它在政治行为的理论模型与实证工作之间架起了一座桥梁。但是,在应用研究人员之间,关于投票者行为在投票距离,候选人位置或是否允许每个人在特定议题上的权重上的异质性的度量方面的适当表示,几乎没有共识。这些选择中的每一个都表明选民效用与候选人和选民问题立场之间的不同且相当复杂的非线性关系,这可能会对研究人员得出的实质性结论产生有意义的影响。但是,很少有人关注在应用工作中表示邻近模型的最佳方法。本文的目的是确定最接近模型的哪种形式效果最好,并特别考虑确定对于独立变量的比例选择不变的功能形式。

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  • 来源
    《Political Analysis 》 |2006年第4期| 393-420| 共28页
  • 作者

    Jeffrey D. Grynaviski;

  • 作者单位

    Department of Political Science University of Chicago 5828 S. University Ave. Chicago IL 60637 Department of Political Science University of Michigan 5700 Haven Hall 505 S. State Street Ann Arbor MI 48109-1045 e-mail: becorrig{at}umich.edu;

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  • 正文语种 eng
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