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Slow convergence of the Gibbs sampler
Authors:Claude B  lisle
Affiliation:Claude Bélisle
Abstract:We consider the Gibbs sampler as a tool for generating an absolutely continuous probability measure ≥ on Rd. When an appropriate irreducibility condition is satisfied, the Gibbs Markov chain (Xn;n ≥ 0) converges in total variation to its target distribution ≥. Sufficient conditions for geometric convergence have been given by various authors. Here we illustrate, by means of simple examples, how slow the convergence can be. In particular, we show that given a sequence of positive numbers decreasing to zero, say (bn;n ≥ 1), one can construct an absolutely continuous probability measure ≥ on Rd which is such that the total variation distance between ≥ and the distribution of Xn, converges to 0 at a rate slower than that of the sequence (bn;n ≥ 1). This can even be done in such a way that ≥ is the uniform distribution over a bounded connected open subset of Rd. Our results extend to hit-and-run samplers with direction distributions having supports with symmetric gaps.
Keywords:Markov-chain Monte Carlo methods  hit-and-run sampler  Gibbs sampler  geometric ergodicity.
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