Deep neural network-based classification model for Sentiment Analysis

Donghang Pan, Jingling Yuan, Lin Li, Deming Sheng
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引用次数: 11

Abstract

The growing prosperity of social networks has brought great challenges to the sentimental tendency mining of users. As more and more researchers pay attention to the sentimental tendency of online users, rich research results have been obtained based on the sentiment classification of explicit texts. However, research on the implicit sentiment of users is still in its infancy. Aiming at the difficulty of implicit sentiment classification, a research on implicit sentiment classification model based on deep neural network is carried out. Classification models based on DNN, LSTM, Bi-LSTM and CNN were established to judge the tendency of the user's implicit sentiment text. Based on the Bi-LSTM model, the classification model of word-level attention mechanism is studied. The experimental results on the public dataset show that the established LSTM series classification model and CNN classification model can achieve good sentiment classification effect, and the classification effect is significantly better than the DNN model. The Bi-LSTM based attention mechanism classification model obtained the optimal R value in the positive category identification.
基于深度神经网络的情感分析分类模型
社交网络的日益繁荣给用户情感倾向的挖掘带来了巨大的挑战。随着越来越多的研究者关注网络用户的情感倾向,基于显性文本情感分类的研究已经取得了丰富的成果。然而,关于用户隐性情感的研究还处于起步阶段。针对隐式情感分类的难点,对基于深度神经网络的隐式情感分类模型进行了研究。建立了基于DNN、LSTM、Bi-LSTM和CNN的分类模型来判断用户隐含情感文本的倾向性。基于Bi-LSTM模型,研究了词级注意机制的分类模型。在公开数据集上的实验结果表明,所建立的LSTM系列分类模型和CNN分类模型均能取得较好的情感分类效果,分类效果明显优于DNN模型。基于Bi-LSTM的注意机制分类模型在正面类别识别中获得了最优R值。
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