中文短文本分类的组合递归神经网络

Yujun Zhou, Bo Xu, Jiaming Xu, Lei Yang, Changliang Li, Bo Xu
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引用次数: 52

摘要

分词是汉语自然语言处理的第一步,分词产生的误差可以传递到整个系统。为了减少分词的影响,提高中文短文本分类系统的整体性能,提出了一种基于长短时记忆递归神经网络(RNN)的字符级和词级特征混合模型。通过将字符级特征与词级特征相结合,构建分词错误所缺失的语义信息,同时减少错误的语义关联。最后的特征表示是在保持句子大部分语义特征的情况下,抑制了分词的错误。最后通过监督中文短文本分类任务对整个模型进行端到端训练。结果表明,本文提出的模型能够有效地表示中文短文本,32类分类和5类分类的性能优于一些显著的方法。
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Compositional Recurrent Neural Networks for Chinese Short Text Classification
Word segmentation is the first step in Chinese natural language processing, and the error caused by word segmentation can be transmitted to the whole system. In order to reduce the impact of word segmentation and improve the overall performance of Chinese short text classification system, we propose a hybrid model of character-level and word-level features based on recurrent neural network (RNN) with long short-term memory (LSTM). By integrating character-level feature into word-level feature, the missing semantic information by the error of word segmentation will be constructed, meanwhile the wrong semantic relevance will be reduced. The final feature representation is that it suppressed the error of word segmentation in the case of maintaining most of the semantic features of the sentence. The whole model is finally trained end-to-end with supervised Chinese short text classification task. Results demonstrate that the proposed model in this paper is able to represent Chinese short text effectively, and the performances of 32-class and 5-class categorization outperform some remarkable methods.
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