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arxiv: 0710.3684 · v1 · submitted 2007-10-19 · 🧮 math.PR

Weak convergence of Metropolis algorithms for non-i.i.d. target distributions

classification 🧮 math.PR
keywords scalingalgorithmsdimensiondistributionsmetropolistargetacceptanceappropriate
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In this paper, we shall optimize the efficiency of Metropolis algorithms for multidimensional target distributions with scaling terms possibly depending on the dimension. We propose a method for determining the appropriate form for the scaling of the proposal distribution as a function of the dimension, which leads to the proof of an asymptotic diffusion theorem. We show that when there does not exist any component with a scaling term significantly smaller than the others, the asymptotically optimal acceptance rate is the well-known 0.234.

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