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Complex Factoid Question Answering with a Free-Text Knowledge Graph

2021-03-23 22:53:09
Chen Zhao, Chenyan Xiong, Xin Qian, Jordan Boyd-Graber

Abstract

We introduce DELFT, a factoid question answering system which combines the nuance and depth of knowledge graph question answering approaches with the broader coverage of free-text. DELFT builds a free-text knowledge graph from Wikipedia, with entities as nodes and sentences in which entities co-occur as edges. For each question, DELFT finds the subgraph linking question entity nodes to candidates using text sentences as edges, creating a dense and high coverage semantic graph. A novel graph neural network reasons over the free-text graph-combining evidence on the nodes via information along edge sentences-to select a final answer. Experiments on three question answering datasets show DELFT can answer entity-rich questions better than machine reading based models, bert-based answer ranking and memory networks. DELFT's advantage comes from both the high coverage of its free-text knowledge graph-more than double that of dbpedia relations-and the novel graph neural network which reasons on the rich but noisy free-text evidence.

Abstract (translated)

URL

https://arxiv.org/abs/2103.12876

PDF

https://arxiv.org/pdf/2103.12876.pdf


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