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A Text Emotion Analysis Method Using the Dual-Channel Convolution Neural Network in Social Networks

机译:一种基于社交网络双通道卷积神经网络的文本情感分析方法

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摘要

In order to solve the problem that the existing deep learning method has insufficient ability in feature extraction in the text emotion classification task, this paper proposes a text emotion analysis using the dual-channel convolution neural network in the social network. First, a double-channel convolutional neural network is constructed. Combined with emotion words, parts of speech, degree adverbs, negative words, punctuation, and other word features that affect the text's emotional tendency, an extended text feature is formed. Then, using the CNN's multichannel mechanism, the extended text features based on the word vector features and the semantic features based on the word vectors are, respectively, input into the CNN model. After each convolution operation of the convolution channel, the BN technology is used to normalize the internal data of the network and the padding technology is used to improve the ability of the model to extract edge features of the data and the speed of the model. Finally, a dynamick-max continuous pooling strategy is adopted to realize the dimensionality reduction of features and enhance the model's ability to extract features. The experimental results show that the accuracy andF1 values obtained by the proposed method can be as high as 94.16 and 92.61, respectively, which are better than several comparison algorithms.
机译:为了解决现有深度学习方法在文本情感分类任务中特征提取能力不足的问题,该文提出一种在社交网络中利用双通道卷积神经网络进行文本情感分析的方法。首先,构建双通道卷积神经网络;结合情感词、词性、度副词、否定词、标点符号等影响文本情感倾向的词特征,形成扩展的文本特征。然后,利用CNN的多通道机制,将基于词向量特征的扩展文本特征和基于词向量的语义特征分别输入到CNN模型中。在卷积通道的每次卷积运算后,利用BN技术对网络内部数据进行归一化,利用填充技术提高模型提取数据边缘特征的能力和模型的速度。最后,采用dynamick-max连续池化策略,实现特征降维,增强模型提取特征的能力。实验结果表明,所提方法得到的准确率和F1值分别高达94.16%和92.61%,均优于几种对比算法。

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