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arxiv: 1501.06769 · v5 · pith:EYJTQYBEnew · submitted 2015-01-27 · 📊 stat.ML · cs.AI· cs.PL

Particle Gibbs with Ancestor Sampling for Probabilistic Programs

classification 📊 stat.ML cs.AIcs.PL
keywords particleprobabilisticancestorprogramresamplingresultstechniquesadapt
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Particle Markov chain Monte Carlo techniques rank among current state-of-the-art methods for probabilistic program inference. A drawback of these techniques is that they rely on importance resampling, which results in degenerate particle trajectories and a low effective sample size for variables sampled early in a program. We here develop a formalism to adapt ancestor resampling, a technique that mitigates particle degeneracy, to the probabilistic programming setting. We present empirical results that demonstrate nontrivial performance gains.

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