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arxiv: 1507.04635 · v4 · submitted 2015-07-16 · 📊 stat.ML · cs.AI

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Black-Box Policy Search with Probabilistic Programs

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classification 📊 stat.ML cs.AI
keywords probabilisticblack-boxprogramspoliciespolicyproblemprogramrepresent
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In this work, we explore how probabilistic programs can be used to represent policies in sequential decision problems. In this formulation, a probabilistic program is a black-box stochastic simulator for both the problem domain and the agent. We relate classic policy gradient techniques to recently introduced black-box variational methods which generalize to probabilistic program inference. We present case studies in the Canadian traveler problem, Rock Sample, and a benchmark for optimal diagnosis inspired by Guess Who. Each study illustrates how programs can efficiently represent policies using moderate numbers of parameters.

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