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Autori principali: Salomone, Robert, South, Leah F., Drovandi, Christopher, Kroese, Dirk P., Johansen, Adam M.
Natura: Preprint
Pubblicazione: 2018
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Accesso online:https://arxiv.org/abs/1805.03924
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author Salomone, Robert
South, Leah F.
Drovandi, Christopher
Kroese, Dirk P.
Johansen, Adam M.
author_facet Salomone, Robert
South, Leah F.
Drovandi, Christopher
Kroese, Dirk P.
Johansen, Adam M.
contents We introduce a new class of sequential Monte Carlo methods which reformulates the essence of the nested sampling method of Skilling (2006) in terms of sequential Monte Carlo techniques. Two new algorithms are proposed, nested sampling via sequential Monte Carlo (NS-SMC) and adaptive nested sampling via sequential Monte Carlo (ANS-SMC). The new framework allows convergence results to be obtained in the setting when Markov chain Monte Carlo (MCMC) is used to produce new samples. An additional benefit is that marginal likelihood (normalising constant) estimates given by NS-SMC are unbiased. In contrast to NS, the analysis of our proposed algorithms does not require the (unrealistic) assumption that the simulated samples be independent. We show that a minor adjustment to our ANS-SMC algorithm recovers the original NS algorithm, which provides insights as to why NS seems to produce accurate estimates despite a typical violation of its assumptions. A numerical study is conducted where the performance of the proposed algorithms and temperature-annealed SMC is compared on challenging problems. Code for the experiments is made available online at https://github.com/LeahPrice/SMC-NS .
format Preprint
id arxiv_https___arxiv_org_abs_1805_03924
institution arXiv
publishDate 2018
record_format arxiv
spellingShingle Unbiased and Consistent Nested Sampling via Sequential Monte Carlo
Salomone, Robert
South, Leah F.
Drovandi, Christopher
Kroese, Dirk P.
Johansen, Adam M.
Computation
We introduce a new class of sequential Monte Carlo methods which reformulates the essence of the nested sampling method of Skilling (2006) in terms of sequential Monte Carlo techniques. Two new algorithms are proposed, nested sampling via sequential Monte Carlo (NS-SMC) and adaptive nested sampling via sequential Monte Carlo (ANS-SMC). The new framework allows convergence results to be obtained in the setting when Markov chain Monte Carlo (MCMC) is used to produce new samples. An additional benefit is that marginal likelihood (normalising constant) estimates given by NS-SMC are unbiased. In contrast to NS, the analysis of our proposed algorithms does not require the (unrealistic) assumption that the simulated samples be independent. We show that a minor adjustment to our ANS-SMC algorithm recovers the original NS algorithm, which provides insights as to why NS seems to produce accurate estimates despite a typical violation of its assumptions. A numerical study is conducted where the performance of the proposed algorithms and temperature-annealed SMC is compared on challenging problems. Code for the experiments is made available online at https://github.com/LeahPrice/SMC-NS .
title Unbiased and Consistent Nested Sampling via Sequential Monte Carlo
topic Computation
url https://arxiv.org/abs/1805.03924