Block-Value Symmetries in Probabilistic Graphical Models

July 02, 2018 Β· Declared Dead Β· πŸ› Conference on Uncertainty in Artificial Intelligence

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Authors Gagan Madan, Ankit Anand, Mausam, Parag Singla arXiv ID 1807.00643 Category cs.AI: Artificial Intelligence Citations 2 Venue Conference on Uncertainty in Artificial Intelligence Last Checked 3 months ago
Abstract
One popular way for lifted inference in probabilistic graphical models is to first merge symmetric states into a single cluster (orbit) and then use these for downstream inference, via variations of orbital MCMC [Niepert, 2012]. These orbits are represented compactly using permutations over variables, and variable-value (VV) pairs, but they can miss several state symmetries in a domain. We define the notion of permutations over block-value (BV) pairs, where a block is a set of variables. BV strictly generalizes VV symmetries, and can compute many more symmetries for increasing block sizes. To operationalize use of BV permutations in lifted inference, we describe 1) an algorithm to compute BV permutations given a block partition of the variables, 2) BV-MCMC, an extension of orbital MCMC that can sample from BV orbits, and 3) a heuristic to suggest good block partitions. Our experiments show that BV-MCMC can mix much faster compared to vanilla MCMC and orbital MCMC.
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