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arxiv: 1301.1299 · v1 · pith:CMXLGBRInew · submitted 2013-01-07 · 📊 stat.ML · cs.AI· cs.LG

Automated Variational Inference in Probabilistic Programming

classification 📊 stat.ML cs.AIcs.LG
keywords probabilisticprogramsinferencedistributionsvariationalalgorithmalgorithmsanalytically
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We present a new algorithm for approximate inference in probabilistic programs, based on a stochastic gradient for variational programs. This method is efficient without restrictions on the probabilistic program; it is particularly practical for distributions which are not analytically tractable, including highly structured distributions that arise in probabilistic programs. We show how to automatically derive mean-field probabilistic programs and optimize them, and demonstrate that our perspective improves inference efficiency over other algorithms.

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