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Chinese Proprietary Domain Text Named Entity Recognition

机译:中文专有域名命名实体识别

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摘要

Chinese named entity recognition(CNER) is a basic task of natural language processing, the purpose of which is to identify the boundary and type of entity existing in the text. In this paper, we first deeply analyze the classical Chinese named entity recognition algorithm from two perspectives. On the basis of statistical knowledge of the conditional random field(CRF) and bidirectional long short term memory(Bi-Lstm) recurrent neural network for Chinese named entity recognition task. In combination with the advantages of Bi-Lstm deep learning entity features, to make up for the shortcoming that Bi-Lstm cannot dynamically output the results at the current moment by using the last output results. We introduce the CRF algorithm after the BI-Lstm algorithm, which makes the model can obtain the context semantic relations and ultimately improve the effectiveness of the experiment.
机译:中文命名实体识别(CNER)是自然语言处理的基本任务,其目的是识别文本中存在的实体的边界和类型。 在本文中,我们首先从两个角度深深分析了古典中文命名实体识别算法。 基于条件随机场(CRF)和双向长期短期记忆(Bi-LSTM)的统计知识,用于中文命名实体识别任务的经常性神经网络。 结合Bi-LSTM深度学习实体特征的优点,弥补Bi-LSTM无法通过使用最后输出结果在当前时刻动态输出结果的缺点。 我们在Bi-LSTM算法之后介绍了CRF算法,这使得模型可以获得上下文语义关系,并最终提高实验的有效性。

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