A survey on neural relation extraction

被引:0
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作者
Kang Liu
机构
[1] Chinese Academy of Sciences,National Laboratory of Pattern Recognition, Institute of Automation
[2] University of Chinese Academy of Sciences,undefined
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关键词
knowledge graph; relation extraction; event extraction and information extraction;
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摘要
Relation extraction is a key task for knowledge graph construction and natural language processing, which aims to extract meaningful relational information between entities from plain texts. With the development of deep learning, many neural relation extraction models were proposed recently. This paper introduces a survey on the task of neural relation extraction, including task description, widely used evaluation datasets, metrics, typical methods, challenges and recent research progresses. We mainly focus on four recent research problems: (1) how to learn the semantic representations from the given sentences for the target relation, (2) how to train a neural relation extraction model based on insufficient labeled instances, (3) how to extract relations across sentences or in a document and (4) how to jointly extract relations and corresponding entities? Finally, we give out our conclusion and future research issues.
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页码:1971 / 1989
页数:18
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