Download PDFOpen PDF in browserCurrent versionDirected Graph Networks for Logical EntailmentEasyChair Preprint 2185, version 19 pages•Date: December 17, 2019AbstractWe introduce a neural model for approximating propositional entailment, a benchmark task for logical reasoning, based upon learned graph convolutions on directed graphs. The model dispenses with some of the inflexible inductive biases applied in previous work on this domain, while still producing competitive results on the dataset. In particular, model performance on larger problems surpasses all previous work. Keyphrases: Graph Neural Network, Logical Entailment, automated reasoning, directed acyclic graph
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