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

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, . We prove that the optimal scaling for a given target varies by less than across a wide range of distributions for the noise in the estimate of the target, and that any scaling that is within of the optimal one will be at least 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 where importance sampling is used to estimate the target density; we also examine results available from an existing simulations study with and where a particle filter was used. Our key conclusions are found to hold in these examples also.
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