资源论文Scaling MPE Inference for Constrained ContinuousMarkov Random Fields with Consensus Optimization

Scaling MPE Inference for Constrained ContinuousMarkov Random Fields with Consensus Optimization

2020-01-13 | |  57 |   43 |   0

Abstract

Probabilistic graphical models are powerful tools for analyzing constrained, continuous domains. However, finding most-probable explanations (MPEs) in these models can be computationally expensive. In this paper, we improve the scalability of MPE inference in a class of graphical models with piecewise-linear and piecewise-quadratic dependencies and linear constraints over continuous domains. We derive algorithms based on a consensus-optimization framework and demonstrate their superior performance over state of the art. We show empirically that in a large-scale voter-preference modeling problem our algorithms scale linearly in the number of dependencies and constraints.

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