Gibbs/Metropolis algorithms on a convex polytope
classification
🧮 math.SP
math.PR
keywords
polytopeconvexdistributioneigenvaluesmetropolisalgorithmalgorithmsbounds
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This paper gives sharp rates of convergence for natural versions of the Metropolis algorithm for sampling from the uniform distribution on a convex polytope. The singular proposal distribution, based on a walk moving locally in one of a fixed, finite set of directions, needs some new tools. We get useful bounds on the spectrum and eigenfunctions using Nash and Weyl-type inequalities. The top eigenvalues of the Markov chain are closely related to the Neuman eigenvalues of the polytope for a novel Laplacian.
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