计算机科学
命名实体识别
实体链接
人工智能
信息抽取
背景(考古学)
图形
任务(项目管理)
建筑
自然语言处理
命名实体
情报检索
知识库
理论计算机科学
经济
管理
视觉艺术
古生物学
艺术
生物
作者
Hanh Thi Hong Tran,Antoine Doucet,Nicolas Sidère,José G. Moreno,Senja Pollak
标识
DOI:10.1007/978-3-030-91669-5_21
摘要
Named entity recognition (NER) is an information extraction technique that aims to locate and classify named entities (e.g., organizations, locations, ...) within a document into predefined categories. Correctly identifying these phrases plays a significant role in simplifying information access. However, it remains a difficult task because named entities (NEs) have multiple forms and they are context dependent. While the context can be represented by contextual features, the global relations are often misrepresented by those models. In this paper, we propose the combination of contextual features from XLNet and global features from Graph Convolution Network (GCN) to enhance NER performance. Experiments over a widely-used dataset, CoNLL 2003, show the benefits of our strategy, with results competitive with the state of the art (SOTA).
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