Control-Data Separation and Logical Condition Propagation for Efficient Inference on Probabilistic Programs
2021-01-05Unverified0· sign in to hype
Ichiro Hasuo, Yuichiro Oyabu, Clovis Eberhart, Kohei Suenaga, Kenta Cho, Shin-ya Katsumata
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We present a novel sampling framework for probabilistic programs. The framework combines two recent ideas -- control-data separation and logical condition propagation -- in a nontrivial manner so that the two ideas boost the benefits of each other. We implemented our algorithm on top of Anglican. The experimental results demonstrate our algorithm's efficiency, especially for programs with while loops and rare observations.