Error bounds for Approximations of Markov chains used in Bayesian Sampling
classification
🧮 math.PR
keywords
approximationsbayesiankernelsmarkovresultsappliedboundschains
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We give a number of results on approximations of Markov kernels in total variation and Wasserstein norms weighted by a Lyapunov function. The results are applied to examples from Bayesian statistics where approximations to transition kernels are made to reduce computational costs.
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