嵌套命名实体识别:综述

Yu Wang, H. Tong, Ziye Zhu, Yun Li
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引用次数: 20

摘要

随着文本挖掘技术的快速发展,许多研究发现文本通常包含各种隐式信息,因此开发这些信息的提取技术非常重要。命名实体识别(NER)是信息提取的第一步,主要识别文本中的人名、地名和组织名称。尽管现有的基于神经的NER方法在许多语言领域取得了巨大的成功,但大多数方法通常忽略了命名实体的嵌套性质。最近,不同的研究集中在嵌套NER问题上,并产生了最先进的性能。本文试图从模型体系结构和模型属性的角度对现有的嵌套NER研究方法进行综述,以帮助读者更好地了解当前的研究现状和思路。在本研究中,我们首先介绍了嵌套NER的背景,特别是嵌套NER与传统(即平面)NER的区别。然后,我们回顾了2002年至2020年现有的嵌套NER方法,并根据模型架构将它们主要分为五类,包括早期基于规则的方法、基于分层的方法、基于区域的方法、基于超图的方法和基于转换的方法。我们还从模型属性的角度更深入地探讨了嵌套NER方法特有的关键属性的影响,即实体依赖关系、阶段框架、错误传播和标记方案。最后,我们总结了该领域面临的挑战,并指出了未来可能的发展方向。这项调查将对三类读者有用:(i)该领域的新手想要了解NER,特别是嵌套NER。(ii)想要厘清扁平型NER和嵌套型NER之间的关系和优势的研究者。(iii)只需要确定哪种NER技术(即嵌套或非嵌套)在其应用程序中效果最好的从业者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nested Named Entity Recognition: A Survey
With the rapid development of text mining, many studies observe that text generally contains a variety of implicit information, and it is important to develop techniques for extracting such information. Named Entity Recognition (NER), the first step of information extraction, mainly identifies names of persons, locations, and organizations in text. Although existing neural-based NER approaches achieve great success in many language domains, most of them normally ignore the nested nature of named entities. Recently, diverse studies focus on the nested NER problem and yield state-of-the-art performance. This survey attempts to provide a comprehensive review on existing approaches for nested NER from the perspectives of the model architecture and the model property, which may help readers have a better understanding of the current research status and ideas. In this survey, we first introduce the background of nested NER, especially the differences between nested NER and traditional (i.e., flat) NER. We then review the existing nested NER approaches from 2002 to 2020 and mainly classify them into five categories according to the model architecture, including early rule-based, layered-based, region-based, hypergraph-based, and transition-based approaches. We also explore in greater depth the impact of key properties unique to nested NER approaches from the model property perspective, namely entity dependency, stage framework, error propagation, and tag scheme. Finally, we summarize the open challenges and point out a few possible future directions in this area. This survey would be useful for three kinds of readers: (i) Newcomers in the field who want to learn about NER, especially for nested NER. (ii) Researchers who want to clarify the relationship and advantages between flat NER and nested NER. (iii) Practitioners who just need to determine which NER technique (i.e., nested or not) works best in their applications.
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