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Collective disambiguation in entity linking based on topic coherence in semantic graphs

机译:基于语义图主题连贯的实体链接中的集体歧义

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摘要

Entity Linking (EL) consists of determinating the entities that best represent the mentions in a document. Mentions can be very ambiguous and can refer to different entities in different contexts.In this paper, we present ABACO, a semantic annotation system for Entity Linking (EL) which addresses name ambiguity assuming that the entity that annotates a mention should be coherent with the main topics of the document. ABACO extracts a sub-graph from a knowledge base which interconnects all the candidate entities to annotate each mention in the document. Candidate entities are scored according to their degree of centrality in the knowledge graph and their textual similarity with the topics of the document, and worst candidates are pruned from the sub-graph.The approach has been validated with 13 datasets and compared with other 11 annotation systems using the GERBIL platform. Results show that ABACO outperforms the other systems for medium/large documents. (C) 2020 Elsevier B.V. All rights reserved.
机译:实体链接(EL)包括确定最能代表文档中提到的实体。提到可以非常暧昧地指的是不同的上下文中的不同实体。在本文中,我们提出了ABACO,用于实体链接的语义注释系统(EL),该名称歧义假设注释提及的实体应该是连贯的文件的主要话题。 ABACO从知识库中提取子图,该库互连所有候选实体以注释在文档中的每一提及。根据知识图中的核心程度评分候选实体以及与文档的主题的文本相似性,最糟糕的候选者被从子图中修剪。该方法已被13个数据集进行验证,并与其他11个注释相比使用Gerbil平台的系统。结果表明,ABACO优于中/大文件的其他系统。 (c)2020 Elsevier B.v.保留所有权利。

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