A SAS Macro for Automated Stopping of Markov Chain Monte Carlo Estimation in Bayesian Modeling with PROC MCMC

Author:

Wagner Wolfgang1ORCID,Hecht Martin2ORCID,Zitzmann Steffen1

Affiliation:

1. Hector Research Institute of Education Sciences and Psychology, University of Tübingen, 72072 Tübingen, Germany

2. Department of Psychology, Helmut Schmidt University, 22043 Hamburg, Germany

Abstract

A crucial challenge in Bayesian modeling using Markov chain Monte Carlo (MCMC) estimation is to diagnose the convergence of the chains so that the draws can be expected to closely approximate the posterior distribution on which inference is based. A close approximation guarantees that the MCMC error exhibits only a negligible impact on model estimates and inferences. However, determining whether convergence has been achieved can often be challenging and cumbersome when relying solely on inspecting the trace plots of the chain(s) or manually checking the stopping criteria. In this article, we present a SAS macro called %automcmc that is based on PROC MCMC and that automatically continues to add draws until a user-specified stopping criterion (i.e., a certain potential scale reduction and/or a certain effective sample size) is reached for the chain(s).

Publisher

MDPI AG

Subject

General Medicine

Reference30 articles.

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