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arXiv:1602.06701 [stat.ML]AbstractReferencesReviewsResources

Inference Networks for Sequential Monte Carlo in Graphical Models

Brooks Paige, Frank Wood

Published 2016-02-22Version 1

We introduce a new approach for amortizing inference in directed graphical models by learning heuristic approximations to stochastic inverses, designed specifically for use as proposal distributions in sequential Monte Carlo methods. We describe a procedure for constructing and learning a structured neural network which represents an inverse factorization of the graphical model, resulting in a conditional density estimator that takes as input particular values of the observed random variables, and returns an approximation to the distribution of the latent variables. This recognition model can be learned offline, independent from any particular dataset, prior to performing inference. The output of these networks can be used as automatically-learned high-quality proposal distributions to accelerate sequential Monte Carlo across a diverse range of problem settings.

Comments: 10 pages. Extended version of abstract presented at NIPS workshop "Advances in Approximate Bayesian Inference", Dec. 2015
Categories: stat.ML
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