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OpenFact: Factuality Enhanced Open Knowledge Extraction | Transactions of the Association for Computational Linguistics | MIT Press
OpenFact: Factuality Enhanced Open Knowledge Extraction | Transactions of the Association for Computational Linguistics | MIT Press
Abstract. We focus on the factuality property during the extraction of an OpenIE corpus named OpenFact, which contains more than 12 million high-quality knowledge triplets. We break down the factuality property into two important aspects—expressiveness and groundedness—and we propose a comprehensive framework to handle both aspects. To enhance expressiveness, we formulate each knowledge piece in OpenFact based on a semantic frame. We also design templates, extra constraints, and adopt human efforts so that most OpenFact triplets contain enough details. For groundedness, we require the main arguments of each triplet to contain linked Wikidata1 entities. A human evaluation suggests that the OpenFact triplets are much more accurate and contain denser information compared to OPIEC-Linked (Gashteovski et al., 2019), one recent high-quality OpenIE corpus grounded to Wikidata. Further experiments on knowledge base completion and knowledge base question answering show the effectiveness of OpenFact over OPIEC-Linked as supplementary knowledge to Wikidata as the major KG.
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OpenFact: Factuality Enhanced Open Knowledge Extraction | Transactions of the Association for Computational Linguistics | MIT Press