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Named Entity Extraction for Knowledge Graphs: A Literature Overview

机译:命名实体提取知识图表:文献概述

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摘要

An enormous amount of digital information is expressed as natural-language (NL) text that is not easily processable by computers. Knowledge Graphs (KG) offer a widely used format for representing information in computer-processable form. Natural Language Processing (NLP) is therefore needed for mining (or lifting) knowledge graphs from NL texts. A central part of the problem is to extract the named entities in the text. The paper presents an overview of recent advances in this area, covering: Named Entity Recognition (NER), Named Entity Disambiguation (NED), and Named Entity Linking (NEL). We comment that many approaches to NED and NEL are based on older approaches to NER and need to leverage the outputs of state-of-the-art NER systems. There is also a need for standard methods to evaluate and compare named-entity extraction approaches. We observe that NEL has recently moved from being stepwise and isolated into an integrated process along two dimensions: the first is that previously sequential steps are now being integrated into end-to-end processes, and the second is that entities that were previously analysed in isolation are now being lifted in each other & x2019;s context. The current culmination of these trends are the deep-learning approaches that have recently reported promising results.
机译:大量数字信息被表示为自然语言(NL)文本,这些文本不易通过计算机处理。知识图表(kg)提供广泛使用的格式,用于代表计算机可处理的表单中的信息。因此,从NL文本中挖掘(或提升)知识图形需要自然语言处理(NLP)。问题的中央部分是在文本中提取指定实体。本文概述了该领域的最新进步,涵盖:命名实体识别(ner),命名实体歧义(ned)和命名实体链接(nel)。我们评论了NED和NEL的许多方法都是基于更老的方法,并且需要利用最先进的NER系统的输出。还需要评估和比较命名实体提取方法的标准方法。我们观察到,NEL最近从逐步移动并沿着两个维度分离为综合过程:首先是现在将先前顺序步骤集成到端到端过程中,第二步骤是先前分析的实体孤立现在正在彼此提升和x2019; s的上下文。目前这些趋势的高潮是最近报道了有希望的结果的深度学习方法。

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