命名实体识别任务:技术与工具

IF 0.6 Q4 AUTOMATION & CONTROL SYSTEMS
N. S. Lagutina, A. M. Vasilyev, D. D. Zafievsky
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引用次数: 0

摘要

命名实体识别(NER)的任务是识别和分类表示命名实体(NEs)的单词和短语,例如来自主题领域的人员、组织、地理名称、日期、事件和术语。在寻找最佳解决方案的过程中,研究人员使用不同的技术和输入数据进行了广泛的实验。这些实验结果的比较表明,NER的质量存在显著差异,并提出了确定所使用技术应用的条件和限制以及寻找新的解决方案的问题。回答这些问题的一个重要部分是对当前研究的系统化和分析以及相关综述的发表。在NE识别领域,分析性文章的作者主要考虑识别和分类的数学方法,而不关注问题本身的细节。在这项调查中,从单个任务类别的角度来考虑新语音识别领域。作者将NER划分为五类:NER的经典任务、NER子任务、社交媒体中的NER、领域中的NER和自然语言处理(NLP)任务中的NER。对于每个类别,作者讨论了解决方案的质量、方法的特点、问题和局限性。为清楚起见,以表格的形式给出了每一类当前科学工作的信息。这次审查使我们能够得出一些结论。深度学习方法是尖端技术中的领先方法。主要问题是开放存取中数据集的缺乏,对计算资源的要求严格,以及缺乏误差分析。NER中一个很有前途的研究领域是开发基于无监督技术或基于规则的学习的方法。在现有的NLP工具中深入开发语言模型可以作为NLP方法文本预处理的可能基础。文章最后描述了使用NER工具对俄语文本进行实验的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Tasks in Named Entity Recognition: Technologies and Tools

Tasks in Named Entity Recognition: Technologies and Tools

The task of named entity recognition (NER) is to identify and classify words and phrases denoting named entities (NEs), such as people, organizations, geographical names, dates, events, and terms from subject areas. While searching for the best solution, researchers conduct a wide range of experiments with different technologies and input data. A comparison of the results of these experiments shows a significant discrepancy in the quality of NER and poses the problem of determining the conditions and limitations for the application of the used technologies, as well as finding new solutions. An important part in answering these questions is the systematization and analysis of current research and the publication of relevant reviews. In the field of NE recognition, the authors of analytical articles primarily consider mathematical methods of identification and classification and do not pay attention to the specifics of the problem itself. In this survey, the field of NE recognition is considered from the point of view of individual task categories. The authors identify five categories: the classical task of NER, NER subtasks, NER in social media, NER in domain, and NER in natural language processing (NLP) tasks. For each category the authors discuss the quality of the solution, features of the methods, problems, and limitations. Information about current scientific works of each category is given in the form of a table for clarity. This review allows us to draw a number of conclusions. Deep learning methods are the leading methods among state-of-the-art technologies. The main problems are the lack of datasets in open access, strict requirements for computing resources, and the lack of error analysis. A promising area of research in NER is the development of methods based on unsupervised techniques or rule-based learning. Intensively developing language models in existing NLP tools can serve as a possible basis for text preprocessing for NER methods. The article ends with a description and results of experiments with NER tools for Russian-language texts.

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来源期刊
AUTOMATIC CONTROL AND COMPUTER SCIENCES
AUTOMATIC CONTROL AND COMPUTER SCIENCES AUTOMATION & CONTROL SYSTEMS-
CiteScore
1.70
自引率
22.20%
发文量
47
期刊介绍: Automatic Control and Computer Sciences is a peer reviewed journal that publishes articles on• Control systems, cyber-physical system, real-time systems, robotics, smart sensors, embedded intelligence • Network information technologies, information security, statistical methods of data processing, distributed artificial intelligence, complex systems modeling, knowledge representation, processing and management • Signal and image processing, machine learning, machine perception, computer vision
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