基于并行TCN模型和注意力模型的文本情感分析

Dong Cao, Yujie Huang, Yunbin Fu
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引用次数: 1

摘要

针对传统单卷积神经网络不能完全提取文本综合特征的问题,提出了一种基于注意力机制的并行TCN模型的文本情感分类方法。首先,利用并行时间卷积网络(TCN)获取综合文本特征;其次,在特征融合层,对并行TCN得到的特征进行融合;最后结合注意机制提取重要特征信息,提高优化后的文本情感分类效果。并对两组中文数据集进行了多组对比实验,本文模型的准确率分别达到了92.06%和92.71%。证明了该模型优于传统的单卷积神经网络。
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Text Sentiment Analysis based on Parallel TCN Model and Attention Model
Aiming at the problem that the traditional single convolutional neural network cannot completely extract comprehensive text features, this paper proposes a text sentiment classification based on the parallel TCN model of attention mechanism. First, obtain the comprehensive text features with the help of parallel Temporal Convolutional Network (TCN). Secondly, in the feature fusion layer, the features obtained by the parallel TCN are fused. Finally, it combines the attention mechanism to extract important feature information and improve the optimized text sentiment classification effect. And conducted multiple sets of comparative experiments on the two sets of Chinese data sets, the accuracy of the model in this paper reached 92.06% and 92.71%. Proved that the proposed model is better than the traditional single convolutional neural network.
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