基于图注意力网络的社交媒体命名实体识别

Wei Zhang, J. Luo, Kehua Yang
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引用次数: 0

摘要

命名实体识别是自然语言处理的一项基本任务。随着互联网的发展,社交媒体已经成为朋友之间信息传递和分享的主要方式,但社交媒体文本往往短小、不正式,导致实体识别准确率较低。本文首次在中文社交媒体命名实体识别任务中使用图注意网络(GAT)生成句子选择解析树中节点的表示,并通过自注意层捕获句子本身的信息。为了减少汉语分词错误的影响,我们采用字符向量和词向量相结合的方法,并结合部分语音信息进行训练。我们将以上两点整合到经典的命名实体识别模型BiLSTM-CRF模型中,形成一个新的模型,对中文社交媒体文本的命名实体识别进行研究。实验结果表明,该模型取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social Media Named Entity Recognition Based On Graph Attention Network
Named entity recognition is a basic task of natural language processing. With the development of the Internet, social media has become the main way of information transmission and sharing with friends, but social media texts are often short and informal, resulting in low entity recognition accuracy. In this paper, we use the Graph Attention Network (GAT) for the first time in the task of Chinese social media named entity recognition to generate the representation of the nodes in the sentence selection parsing tree, and capture the information of the sentence itself through the self-attention layer. In order to reduce the impact of Chinese word segmentation errors, we use a combination of character vectors and word vectors, and incorporate part of speech information for training. We integrate the above two points into the classic named entity recognition model BiLSTM-CRF model to form a new model to conduct research on named entity recognition of Chinese social media text. Experimental results show that our model achieves competitive results.
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