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A Survey on Neural Open Information Extraction: Current Status and Future Directions

2022-05-24Unverified0· sign in to hype

Shaowen Zhou, Bowen Yu, Aixin Sun, Cheng Long, Jingyang Li, Haiyang Yu, Jian Sun, Yongbin Li

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Abstract

Open Information Extraction (OpenIE) facilitates domain-independent discovery of relational facts from large corpora. The technique well suits many open-world natural language understanding scenarios, such as automatic knowledge base construction, open-domain question answering, and explicit reasoning. Thanks to the rapid development in deep learning technologies, numerous neural OpenIE architectures have been proposed and achieve considerable performance improvement. In this survey, we provide an extensive overview of the-state-of-the-art neural OpenIE models, their key design decisions, strengths and weakness. Then, we discuss limitations of current solutions and the open issues in OpenIE problem itself. Finally we list recent trends that could help expand its scope and applicability, setting up promising directions for future research in OpenIE. To our best knowledge, this paper is the first review on this specific topic.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
CaRBIMoJIEF153.3Unverified
CaRBMacroIEF154.8Unverified
CaRBIMoJIEF153.5Unverified
CaRBOpenIE6F152.7Unverified
CaRBMulti2OIEF152.3Unverified
CaRBOpenIE4F151.6Unverified
CaRBNOIEF151.1Unverified
CaRBRnnOIEF149Unverified
CaRBSpanOIE [48]F148.5Unverified
CaRBClausIE [9]F145Unverified
CaRBSenseOIE [30]F128.2Unverified
OIE2016SpanOIE [48]F169.4Unverified
OIE2016RnnOIE [36]F162Unverified
OIE2016OpenIE4 [26]F160Unverified
OIE2016ClausIE [9]F159Unverified

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