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Autori principali: Guédon, Tom, Baey, Charlotte, Kuhn, Estelle
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2408.13022
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author Guédon, Tom
Baey, Charlotte
Kuhn, Estelle
author_facet Guédon, Tom
Baey, Charlotte
Kuhn, Estelle
contents Computing ratios of normalizing constants plays an important role in statistical modeling. Two important examples are hypothesis testing in latent variables models, and model comparison in Bayesian statistics. In both examples, the likelihood ratio and the Bayes factor are defined as the ratio of the normalizing constants of posterior distributions. We propose in this article a novel methodology that estimates this ratio using stochastic approximation principle. Our estimator is consistent and asymptotically Gaussian. Its asymptotic variance is smaller than the one of the popular optimal bridge sampling estimator. Furthermore, it is much more robust to little overlap between the two unnormalized distributions considered. Thanks to its online definition, our procedure can be integrated in an estimation process in latent variables model, and therefore reduce the computational effort. The performances of the estimator are illustrated through a simulation study and compared to two other estimators : the ratio importance sampling and the optimal bridge sampling estimators.
format Preprint
id arxiv_https___arxiv_org_abs_2408_13022
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Estimation of ratios of normalizing constants using stochastic approximation : the SARIS algorithm
Guédon, Tom
Baey, Charlotte
Kuhn, Estelle
Applications
Methodology
Computing ratios of normalizing constants plays an important role in statistical modeling. Two important examples are hypothesis testing in latent variables models, and model comparison in Bayesian statistics. In both examples, the likelihood ratio and the Bayes factor are defined as the ratio of the normalizing constants of posterior distributions. We propose in this article a novel methodology that estimates this ratio using stochastic approximation principle. Our estimator is consistent and asymptotically Gaussian. Its asymptotic variance is smaller than the one of the popular optimal bridge sampling estimator. Furthermore, it is much more robust to little overlap between the two unnormalized distributions considered. Thanks to its online definition, our procedure can be integrated in an estimation process in latent variables model, and therefore reduce the computational effort. The performances of the estimator are illustrated through a simulation study and compared to two other estimators : the ratio importance sampling and the optimal bridge sampling estimators.
title Estimation of ratios of normalizing constants using stochastic approximation : the SARIS algorithm
topic Applications
Methodology
url https://arxiv.org/abs/2408.13022