Abstract
Ideal point estimators are typically based on an assumption that all legislators are equally responsive to modeled dimensions of legislative disagreement; however, particularistic constituency interests and idiosyncrasies of individual legislators introduce variation in the degree to which legislators cast votes predictably. I introduce a Bayesian heteroskedastic ideal point estimator and demonstrate by Monte Carlo simulation that it outperforms standard homoskedastic estimators at recovering the relative positions of legislators. In addition to providing a refinement of ideal point estimates, the heteroskedastic estimator recovers legislator-specific error variance parameters that describe the extent to which each legislator's voting behavior isnotconditioned on the primary axes of disagreement in the legislature. Through applications to the roll call histories of the U.S. Congress, the E.U. Parliament, and the U.N. General Assembly, I demonstrate how to use the heteroskedastic estimator to study substantive questions related to legislative incentives for low-dimensional voting behavior as well as diagnose unmodeled dimensions and nonconstant ideal points.
Publisher
Cambridge University Press (CUP)
Subject
Political Science and International Relations,Sociology and Political Science
Reference54 articles.
1. Practical Issues in Implementing and Understanding Bayesian Ideal Point Estimation
2. Martin Andrew D. , and Quinn Kevin M. 2009. R package “MCMCpack”. http://mcmcpack.wustl.edu/ (accessed December 19, 2009).
3. Clashes in the Assembly
4. Treier Shawn , and Hillygus Sunshine . 2007. Front and center? The policy attitudes of ideological moderates. Working paper.
5. Rivers Douglas . 2003. Identification of multidimensional spatial voting models. Manuscript. Stanford University. Typescript.
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