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- Monte Carlo Integration with Acceptance-Rejection
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- This paper has been withdrawn.
- Abstract:
- We consider Monte Carlo integration under rejection sampling
or Metropolis-Hastings sampling. Each algorithm involves accepting or rejecting observations from proposal distributions other than a target distribution. While taking the likelihood approach of Kong et al., we basically treat the sampling scheme as a random design and define a stratified estimator of the baseline measure. We establish that the likelihood estimator has no greater asymptotic variance than the crude Monte Carlo estimator under rejection sampling or independence
Metropolis-Hastings sampling. We apply a subsampling technique to reduce the computational cost, and illustrate with three examples the computational effectiveness of the likelihood method under general Metropolis-Hastings sampling.