SOTAVerified

Principled Parallel Mean-Field Inference for Discrete Random Fields

2015-11-19CVPR 2016Unverified0· sign in to hype

Pierre Baqué, Timur Bagautdinov, François Fleuret, Pascal Fua

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Mean-field variational inference is one of the most popular approaches to inference in discrete random fields. Standard mean-field optimization is based on coordinate descent and in many situations can be impractical. Thus, in practice, various parallel techniques are used, which either rely on ad-hoc smoothing with heuristically set parameters, or put strong constraints on the type of models. In this paper, we propose a novel proximal gradient-based approach to optimizing the variational objective. It is naturally parallelizable and easy to implement. We prove its convergence, and then demonstrate that, in practice, it yields faster convergence and often finds better optima than more traditional mean-field optimization techniques. Moreover, our method is less sensitive to the choice of parameters.

Tasks

Reproductions