Convergence of random-weight sequential Monte Carlo methods
We investigate the properties of a sequential Monte Carlo method where the particle weight that appears in the algorithm is estimated by a positive, unbiased estimator. We present broadly-applicable convergence results, including a central limit theorem, and we discuss their relevance for applicatio...
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Zusammenfassung: | We investigate the properties of a sequential Monte Carlo method where the
particle weight that appears in the algorithm is estimated by a positive,
unbiased estimator. We present broadly-applicable convergence results,
including a central limit theorem, and we discuss their relevance for
applications in statistical physics. Using these results, we show that the
resampling step reduces the impact of the randomness of the weights on the
asymptotic variance of the estimator. In addition, we explore the limits of
convergence of the sequential Monte Carlo method, with a focus on almost sure
convergence. We construct an example algorithm where we can prove convergence
in probability, but which does not converge almost surely, even in the
non-random-weight case. |
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DOI: | 10.48550/arxiv.2208.12108 |