Hybrid Attention Networks For Chinese Short Text Classification
COMPUTACION Y SISTEMAS(2017)
摘要
To improve the classification performance for Chinese short text with automatic semantic feature selection, in this paper we propose the Hybrid Attention Networks (HANs) which combines the word-and character-level selective attentions. The model firstly applies RNN and CNN to extract the semantic features of texts. Then it captures class-related attentive representation from word-and character-level features. Finally, all of the features are concatenated and fed into the output layer for classification. Experimental results on 32-class and 5-class datasets show that, our model outperforms multiple baselines by combining not only the word-and character-level features of the texts, but also class-related semantic features by attentive mechanism.
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关键词
Chinese short texts, text classification, attentive mechanism, convolutional neural network, recurrent neural network
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