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Leverage Lexical Knowledge for Chinese Named Entity Recognition via Collaborative Graph Network

机译:利用词汇知识通过协同图网络进行中文命名实体识别

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The lack of word boundaries information has been seen as one of the main obstacles to develop a high performance Chinese named entity recognition (NER) system. Fortunately, the automatically constructed lexicon contains rich word boundaries information and word semantic information. However, integrating lexical knowledge in Chinese NER tasks still faces challenges when it comes to self-matched lexical words as well as the nearest contextual lexical words. We present a Collaborative Graph Network to solve these challenges. Experiments on various datasets show that our model not only outperforms the state-of-the-art (SOTA) results, but also achieves a speed that is six to fifteen times faster than that of the SOTA model.~1
机译:缺少单词边界信息已被视为开发高性能中文命名实体识别(NER)系统的主要障碍之一。幸运的是,自动构建的词典包含丰富的单词边界信息和单词语义信息。但是,将词汇知识整合到中文NER任务中时,在自匹配词汇词以及最接近的上下文词汇词方面仍然面临挑战。我们提出了一个协作图网络来解决这些挑战。在各种数据集上进行的实验表明,我们的模型不仅超越了最新技术(SOTA)的结果,而且实现了比SOTA模型快6至15倍的速度。〜1

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