MCMC-driven importance samplers

dc.contributor.authorLlorente, Fernando
dc.contributor.authorCurbelo, Ernesto
dc.contributor.authorMartino, Luca
dc.contributor.authorElvira, V.
dc.contributor.authorDelgado, D.
dc.date.accessioned2023-09-21T13:42:04Z
dc.date.available2023-09-21T13:42:04Z
dc.date.issued2022
dc.descriptionThis work has been supported by Spanish government via grant FPU19/00815, by Agencia Estatal de InvestigaciónAEI (project SP-GRAPH, ref. num. PID2019-105032GB-I00), and by Young Researchers R&D Project. Ref. F861, AUTO-BA-GRAPH-, funded by the Community of Madrid and Rey Juan Carlos University.es
dc.description.abstractMonte Carlo sampling methods are the standard procedure for approximating complicated integrals of multidimensional posterior distributions in Bayesian inference. In this work, we focus on the class of layered adaptive importance sampling algorithms, which is a family of adaptive importance samplers where Markov chain Monte Carlo algorithms are employed to drive an underlying multiple importance sampling scheme. The modular nature of the layered adaptive importance sampling scheme allows for different possible implementations, yielding a variety of different performances and computational costs. In this work, we propose different enhancements of the classical layered adaptive importance sampling setting in order to increase the efficiency and reduce the computational cost, of both upper and lower layers. The different variants address computational challenges arising in real-world applications, for instance with highly concentrated posterior distributions. Furthermore, we introduce different strategies for designing cheaper schemes, for instance, recycling samples generated in the upper layer and using them in the final estimators in the lower layer. Different numerical experiments show the benefits of the proposed schemes, comparing with benchmark methods presented in the literature, and in several challenging scenarios.es
dc.identifier.citationF. Llorente, E. Curbelo, L. Martino, V. Elvira, D. Delgado, MCMC‐driven importance samplers, Applied Mathematical Modelling, Volume 111, 2022, Pages 310-331, ISSN 0307-904X, https://doi.org/10.1016/j.apm.2022.06.027es
dc.identifier.doi10.1016/j.apm.2022.06.027es
dc.identifier.issn1872-8480
dc.identifier.urihttps://hdl.handle.net/10115/24449
dc.language.isoenges
dc.publisherElsevieres
dc.rightsAttribution-NonCommercial-NoDerivatives 4.0 Internacional*
dc.rights.accessRightsinfo:eu-repo/semantics/openAccesses
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/*
dc.subjectBayesian inferencees
dc.subjectImportance samplinges
dc.subjectQuadrature methodses
dc.subjectComputational algorithmses
dc.titleMCMC-driven importance samplerses
dc.typeinfo:eu-repo/semantics/articlees

Archivos

Bloque original

Mostrando 1 - 1 de 1
Cargando...
Miniatura
Nombre:
1-s2.0-S0307904X22003031-main.pdf
Tamaño:
3.18 MB
Formato:
Adobe Portable Document Format
Descripción:

Bloque de licencias

Mostrando 1 - 1 de 1
No hay miniatura disponible
Nombre:
license.txt
Tamaño:
2.67 KB
Formato:
Item-specific license agreed upon to submission
Descripción: