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Expectation Particle Belief Propagation

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arxiv 1506.05934 v1 pith:DGPRNVSX submitted 2015-06-19 stat.CO cs.AIstat.ML

Expectation Particle Belief Propagation

classification stat.CO cs.AIstat.ML
keywords algorithmpropagationbeliefcomputationaldistributionsparticleprovidescomplexity
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We propose an original particle-based implementation of the Loopy Belief Propagation (LPB) algorithm for pairwise Markov Random Fields (MRF) on a continuous state space. The algorithm constructs adaptively efficient proposal distributions approximating the local beliefs at each note of the MRF. This is achieved by considering proposal distributions in the exponential family whose parameters are updated iterately in an Expectation Propagation (EP) framework. The proposed particle scheme provides consistent estimation of the LBP marginals as the number of particles increases. We demonstrate that it provides more accurate results than the Particle Belief Propagation (PBP) algorithm of Ihler and McAllester (2009) at a fraction of the computational cost and is additionally more robust empirically. The computational complexity of our algorithm at each iteration is quadratic in the number of particles. We also propose an accelerated implementation with sub-quadratic computational complexity which still provides consistent estimates of the loopy BP marginal distributions and performs almost as well as the original procedure.

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