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arxiv: 1408.4344 · v3 · pith:UCRWPWWWnew · submitted 2014-08-19 · 📊 stat.CO

Optimal scaling for the pseudo-marginal random walk Metropolis: insensitivity to the noise generating mechanism

classification 📊 stat.CO
keywords optimalscalingtargetdistributionsefficiencyestimateexaminemetropolis
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We examine the optimal scaling and the efficiency of the pseudo-marginal random walk Metropolis algorithm using a recently-derived result on the limiting efficiency as the dimension, $d\rightarrow \infty$. We prove that the optimal scaling for a given target varies by less than $20\%$ across a wide range of distributions for the noise in the estimate of the target, and that any scaling that is within $20\%$ of the optimal one will be at least $70\%$ efficient. We demonstrate that this phenomenon occurs even outside the range of distributions for which we rigorously prove it. We then conduct a simulation study on an example with $d=10$ where importance sampling is used to estimate the target density; we also examine results available from an existing simulations study with $d=5$ and where a particle filter was used. Our key conclusions are found to hold in these examples also.

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