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Named Entity Recognition and Linking in Tweets Based on Linguistic Similarity

机译:基于语言相似性的推文中的命名实体识别和链接

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This work proposes a novel approach in Named Entity rEcog-nition and Linking (NEEL) in tweets, applying the same strategy already presented for Question Answering (QA) by the same authors. The previous work describes a rule-based and ontology-based system that attempts to retrieve the correct answer to a query from the DBPedia ontology through a similarity measure between the query and the ontology labels. In this paper, a tweet is interpreted as a query for the QA system: both the text and the thread of a tweet are a sequence of statements that have been linked to the ontology. Provided that tweets make extensive use of informal language, the similarity measure and the underlying processes have been devised differently than in the previous approach; also the particular structure of a tweet, that is the presence of mentions, hashtags, and partially structured statements, is taken into consideration for linguistic insights. NEEL is achieved actually as the output of annotating a tweet with the names of the ontological entities retrieved by the system. The strategy is explained in detail along with the architecture and the implementation of the system; also the performance as compared to the systems presented at the #Micropost2016 workshop NEEL Challenge co-located with the World Wide Web conference 2016 (WWW '16) is reported and discussed.
机译:这项工作采用了相同作者已经针对问题解答(QA)提出的相同策略,在推文中的命名实体重新认识和链接(NEEL)中提出了一种新颖的方法。先前的工作描述了一个基于规则和基于本体的系统,该系统尝试通过查询与本体标签之间的相似性度量从DBPedia本体中检索查询的正确答案。在本文中,推文被解释为对QA系统的查询:推文的文本和线程都是与本体关联的一系列语句。假设推文广泛使用非正式语言,则相似性度量和底层流程的设计方式与以前的方法不同;此外,对于语言见解,还会考虑推文的特殊结构,即提及,主题标签和部分结构化陈述的存在。 NEEL实际上是用系统检索的本体名称来注释推文的输出而实现的。对该策略以及系统的体系结构和实现进行了详细说明。与在#Micropost2016研讨会NEEL Challenge与2016 World Wide Web Conference(WWW '16)共同举办的系统上相比,该系统的性能也得到了报告和讨论。

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