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On the Asymptotics of Importance Weighted Variational Inference

Authors :
Cherief-Abdellatif, Badr-Eddine
Douc, Randal
Doucet, Arnaud
Marival, Hugo
Publication Year :
2025

Abstract

For complex latent variable models, the likelihood function is not available in closed form. In this context, a popular method to perform parameter estimation is Importance Weighted Variational Inference. It essentially maximizes the expectation of the logarithm of an importance sampling estimate of the likelihood with respect to both the latent variable model parameters and the importance distribution parameters, the expectation being itself with respect to the importance samples. Despite its great empirical success in machine learning, a theoretical analysis of the limit properties of the resulting estimates is still lacking. We fill this gap by establishing consistency when both the Monte Carlo and the observed data sample sizes go to infinity simultaneously. We also establish asymptotic normality and efficiency under additional conditions relating the rate of growth between the Monte Carlo and the observed data samples sizes. We distinguish several regimes related to the smoothness of the importance ratio.<br />Comment: 25 pages, 2 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.08477
Document Type :
Working Paper