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arxiv: 1402.4733 · v2 · pith:24ODXYUUnew · submitted 2014-02-19 · 🧮 math.PR

Convergence Rates for Hierarchical Gibbs Samplers

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keywords hierarchicalconvergencedepthgibbsrateresultssamplertotal
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We establish some results for the rate of convergence in total variation of a Gibbs sampler to its equilibrium distribution. This sampler is motivated by a hierarchical Bayesian inference construction for a gamma random variable. Our results apply to a wide range of parameter values in the case that the hierarchical depth is 3 or 4, and are more restrictive for depth greater than 4. Our method involves showing a relationship between the total variation of two ordered copies of our chain and the maximum of the ratios of their respective co-ordinates. We construct auxiliary stochastic processes to show that this ratio does converge to 1 at a geometric rate.

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