Tractable Learning for Complex Probability Queries
Bekker, Jessa, Davis, Jesse, Choi, Arthur, Darwiche, Adnan, Broeck, Guy Van den
–Neural Information Processing Systems
Tractable learning aims to learn probabilistic models where inference is guaranteed to be efficient. However, the particular class of queries that is tractable depends on the model and underlying representation. Usually this class is MPE or conditional probabilities $\Pr(\xs \ys)$ for joint assignments $\xs,\ys$. We propose a tractable learner that guarantees efficient inference for a broader class of queries. It simultaneously learns a Markov network and its tractable circuit representation, in order to guarantee and measure tractability. Our approach differs from earlier work by using Sentential Decision Diagrams (SDD) as the tractable language instead of Arithmetic Circuits (AC).
Neural Information Processing Systems
Feb-14-2020, 11:11:36 GMT
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