Curvature, concentration and error estimates for Markov chain Monte Carlo
classification
🧮 math.PR
keywords
curvatureestimatesempiricalmarkovmeansunderamountsassumption
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We provide explicit nonasymptotic estimates for the rate of convergence of empirical means of Markov chains, together with a Gaussian or exponential control on the deviations of empirical means. These estimates hold under a "positive curvature" assumption expressing a kind of metric ergodicity, which generalizes the Ricci curvature from differential geometry and, on finite graphs, amounts to contraction under path coupling.
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