Langevin Incremental Mixture Importance Sampling
Matteo Fasiolo, Fl\'avio Eler de Melo, Simon Maskell

TL;DR
This paper introduces a new importance sampling method that uses local gradient information to construct efficient mixture components, improving scalability and flexibility for high-dimensional and non-log-concave targets.
Contribution
It develops a novel importance sampler leveraging local approximations via differential equations, enhancing efficiency and applicability over existing methods.
Findings
Performs well on high-dimensional non-Gaussian densities
Handles non-log-concave targets effectively
Demonstrates improved efficiency in Bayesian logistic regression
Abstract
This work proposes a novel method through which local information about the target density can be used to construct an efficient importance sampler. The backbone of the proposed method is the Incremental Mixture Importance Sampling (IMIS) algorithm of Raftery and Bao (2010), which builds a mixture importance distribution incrementally, by positioning new mixture components where the importance density lacks mass, relative to the target. The key innovation proposed here is that the mixture components used by IMIS are local approximations to the target density. In particular, their mean vectors and covariance matrices are constructed by numerically solving certain differential equations, whose solution depends on the gradient field of the target log-density. The new sampler has a number of advantages: a) it provides an extremely parsimonious parametrization of the mixture importance…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Markov Chains and Monte Carlo Methods · Statistical Methods and Bayesian Inference
