计算机科学
命名实体识别
人工智能
模棱两可
实体链接
自然语言处理
知识图
变压器
知识库
物理
管理
量子力学
电压
经济
程序设计语言
任务(项目管理)
作者
Jikun Dong,Kaifang Long,Jiran Zhu,Hui Yu,Chen Lv,Zengzhen Shao,Weizhi Xu
标识
DOI:10.1007/978-981-99-7022-3_17
摘要
Chinese named entity recognition (CNER) constitutes a pivotal undertaking entailing the identification and classification of named entities present within Chinese text. Traditional approaches based on CNN and BiLSTM have been effective for sequence labeling tasks. Additionally, graph neural networks (GNNs) have shown promising results in improving Chinese NER performance by incorporating lexical knowledge. However, these methods may still face challenges in handling ambiguity and inaccurate boundary recognition in Chinese NER. To tackle these challenges, we propose a knowledge and semantic relation enhancement framework. This framework integrates N-gram information and lexical knowledge into a gated graph neural network (GGNN) to capture Chinese lexical information and reduce ambiguity. Moreover, we leverage the Transformer model to update the weight information of each node, aiming to eliminate the influence of incorrect matching lexicons and augment the model’s capability to recognize entity boundaries. Comprehensive experiments conducted on diverse datasets, including Resume, CCKS2017, MSRA, and a self-constructed History dataset, substantiate that our proposed model attains comparable results.
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