Research on Chinese Nested Entity Recognition Based on IDCNNLR and GlobalPointer

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Weijun Li, Jintong Liu, Yuxiao Gao, Xinyong Zhang, Jianlai Gu
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引用次数: 0

Abstract

The task of named entity recognition (NER) is to identify entities in the text and predict their categories. In real-life scenarios, the context of the text is often complex, and there may exist nested entities within an entity. This kind of entity is called a nested entity, and the task of recognizing entities with nested structures is referred to as nested named entity recognition. Most existing NER models can only handle flat entities, and there has been limited research progress in Chinese nested named entity recognition, resulting in relatively few models in this direction. General NER models have limited semantic extraction capabilities and cannot capture deep semantic information between nested entities in the text. To address these issues, this paper proposes a model that uses the GlobalPointer module to identify nested entities in the text and constructs the IDCNNLR semantic extraction module to extract deep semantic information. Furthermore, multiple-head self-attention mechanisms are incorporated into the model at multiple positions to achieve data denoising, enhancing the quality of semantic features. The proposed model considers each possible entity boundary through the GlobalPointer module, and the IDCNNLR semantic extraction module and multi-position attention mechanism are introduced to enhance the model’s semantic extraction capability. Experimental results demonstrate that the proposed model achieves F1 scores of 69.617% and 79.285% on the CMeEE Chinese nested entity recognition dataset and CLUENER2020 Chinese fine-grained entity recognition dataset, respectively. The model exhibits improvement compared to baseline models, and each innovation point shows effective performance enhancement in ablative experiments.
基于 IDCNNLR 和 GlobalPointer 的中文嵌套实体识别研究
命名实体识别(NER)的任务是识别文本中的实体并预测其类别。在现实生活中,文本的上下文往往很复杂,实体中可能存在嵌套实体。这种实体被称为嵌套实体,识别具有嵌套结构的实体的任务被称为嵌套命名实体识别。现有的 NER 模型大多只能处理平面实体,而中文嵌套命名实体识别的研究进展有限,因此这方面的模型相对较少。一般的 NER 模型语义提取能力有限,无法捕捉文本中嵌套实体之间的深层语义信息。针对这些问题,本文提出了一种利用 GlobalPointer 模块识别文本中嵌套实体,并构建 IDCNNLR 语义提取模块提取深层语义信息的模型。此外,该模型还在多个位置加入了多头自关注机制,以实现数据去噪,提高语义特征的质量。提出的模型通过 GlobalPointer 模块考虑了每个可能的实体边界,并引入了 IDCNNLR 语义提取模块和多位置关注机制,以增强模型的语义提取能力。实验结果表明,所提出的模型在 CMeEE 中文嵌套实体识别数据集和 CLUENER2020 中文细粒度实体识别数据集上的 F1 分数分别达到了 69.617% 和 79.285%。与基线模型相比,该模型有所改进,每个创新点在消融实验中都显示出有效的性能提升。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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