Bayesian and Frequentist Inference for Ecological Inference: The R×C Case |
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Authors: | Ori Rosen,Wenxin Jiang,Gary King,& Martin A. Tanner |
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Affiliation: | Department of Statistics, University of Pittsburgh, 2702 Cathedral of Learning, Pittsburgh, PA 15260, USA,;Department of Statistics, Northwestern University, USA,;Department of Government, Harvard University, USA |
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Abstract: | In this paper we propose Bayesian and frequentist approaches to ecological inference, based on R × C contingency tables, including a covariate. The proposed Bayesian model extends the binomial-beta hierarchical model developed by K ing , R osen and T anner (1999) from the 2×2 case to the R × C case. As in the 2×2 case, the inferential procedure employs Markov chain Monte Carlo (MCMC) methods. As such, the resulting MCMC analysis is rich but computationally intensive. The frequentist approach, based on first moments rather than on the entire likelihood, provides quick inference via nonlinear least-squares, while retaining good frequentist properties. The two approaches are illustrated with simulated data, as well as with real data on voting patterns in Weimar Germany. In the final section of the paper we provide an overview of a range of alternative inferential approaches which trade-off computational intensity for statistical efficiency. |
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Keywords: | ecological inference Bayesian inference frequentist inference voting patterns |
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