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KagNet: Knowledge-Aware Graph Networks for Commonsense Reasoning

2019-09-04IJCNLP 2019Code Available1· sign in to hype

Bill Yuchen Lin, Xinyue Chen, Jamin Chen, Xiang Ren

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Abstract

Commonsense reasoning aims to empower machines with the human ability to make presumptions about ordinary situations in our daily life. In this paper, we propose a textual inference framework for answering commonsense questions, which effectively utilizes external, structured commonsense knowledge graphs to perform explainable inferences. The framework first grounds a question-answer pair from the semantic space to the knowledge-based symbolic space as a schema graph, a related sub-graph of external knowledge graphs. It represents schema graphs with a novel knowledge-aware graph network module named KagNet, and finally scores answers with graph representations. Our model is based on graph convolutional networks and LSTMs, with a hierarchical path-based attention mechanism. The intermediate attention scores make it transparent and interpretable, which thus produce trustworthy inferences. Using ConceptNet as the only external resource for Bert-based models, we achieved state-of-the-art performance on the CommonsenseQA, a large-scale dataset for commonsense reasoning.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
CommonsenseQAKagNetAccuracy58.9Unverified

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