Adaptive Gibbs samplers and related MCMC methods
classification
📊 stat.CO
math.PR
keywords
adaptivegibbssamplersvariousalgorithmattemptcautionarycertain
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We consider various versions of adaptive Gibbs and Metropolis-within-Gibbs samplers, which update their selection probabilities (and perhaps also their proposal distributions) on the fly during a run by learning as they go in an attempt to optimize the algorithm. We present a cautionary example of how even a simple-seeming adaptive Gibbs sampler may fail to converge. We then present various positive results guaranteeing convergence of adaptive Gibbs samplers under certain conditions.
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