Version française / Séminaires
Séminaire MODAL'X : Marie Perrot-Dockes (MAP5)
Publié le 23 octobre 2025
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Mis à jour le 13 janvier 2026
Efficiently Computed Marginal Likelihoods using the THAMES Estimator
Date(s)
le 15 janvier 2026
14h00 - 15h00
Lieu(x)
Résumé : We propose a new methodology for efficiently computing marginal likelihoods for different models including univariate and multivariate mixture models. The estimator that this methodology proposes computes the marginal likelihood from Markov chain Monte Carlo (MCMC) samples, is consistent, asymptotically normal and of finite variance. In addition, it is invariant to label switching, does not require posterior samples from hidden allocation vectors, and is efficiently approximated, even for an arbitrarily high number of components. Its computational efficiency is based on an asymptotically optimal ordering of the parameter space, which can in turn be used to provide useful visualisations. We test it in simulation settings where the true marginal likelihood is available analytically. It performs well against state-of-the-art competitors, even in multivariate settings with a high number of components. We demonstrate its utility for inference and model selection on univariate and multivariate data sets.
Mis à jour le 13 janvier 2026