2022
DOI: 10.4204/eptcs.364.14
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Proceedings 38th International Conference on Logic Programming

Abstract: Recent advances in neural-symbolic learning, such as Deep-ProbLog, extend probabilistic logic programs with neural predicates. Like graphical models, these probabilistic logic programs define a probability distribution over possible worlds, for which inference is computationally hard. We propose Deep-StochLog, an alternative neural-symbolic framework based on stochastic definite clause grammars, a kind of stochastic logic program. More specifically, we introduce neural grammar rules into stochastic definite cl… Show more

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