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Going Beyond Convergence in Bayesian Estimation: Why Precision Matters Too and How to Assess It
Authors:Steffen Zitzmann  Martin Hecht
Institution:1. University of Kiel;2. Humboldt-Universit?t zu Berlin
Abstract:Most of the software that is available to implement Bayesian approaches uses Markov chain Monte Carlo (MCMC) methods. It is our impression that many researchers are primarily concerned with convergence as assessed by the Potential Scale Reduction (PSR) and that other aspects of MCMC are largely ignored. In this article, we argue that the precision with which the Bayesian estimates are approximated by summary statistics for the MCMC chain is essential to ensure good statistical properties. We discuss the Effective Sample Size (ESS), which indicates how well an estimate is approximated, and present evidence from two simulation studies and an example from organizational research to support our claim that researchers should be concerned not only with convergence but also with precision, particularly when a multilevel model is estimated. In addition, we demonstrate how Mplus can be modified so that users can control the ESS, and we conclude with recommendations.
Keywords:Bayesian estimation  convergence  Markov chain Monte Carlo  multilevel modeling
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