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Based BERT-BiLSTM-ATT Model of Commodity Commentary on The Emotional Tendency Analysis

机译:基于BERT-BILSTM-ATT模型对情绪倾向分析的商品评论

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In order to realize the analysis of the emotional tendency of the product user reviews. This paper proposes a method for analyzing the sentiment orientation of product reviews based on the BERT-BiLSTM-ATT model. First, use the BERT model to obtain the feature representation of the product review text, and then input the obtained feature representation into the BiLSTM network to extract the emotional features of the product review. Add an Attention layer before the output layer of the normal BiLSTM model to further improve the classification accuracy, and finally combine with Softmax The classifier classifies the extracted features. To validate the algorithm, the design and LSTM, BiLSTM, BiLSTM-ATT, BERTBiLSTM comparative model experiments, experimental results show that the algorithm accuracy on test set are improved 6.17%, 3.75%, 2.83%, 1.03%, to prove the effectiveness of this method in the relevant classification task.
机译:为了实现产品用户评论的情感趋势的分析。 本文提出了一种根据BERT-BILSTM-ATT模型分析产品评论的情绪取向的方法。 首先,使用BERT模型获取产品评论文本的特征表示,然后将所获得的特征表示输入到Bilstm网络中,以提取产品审查的情绪特征。 在正常BILSTM模型的输出层之前添加注意层,以进一步提高分类准确性,最后与SoftMax组合分类器分类提取的功能。 为了验证算法,设计和LSTM,BILSTM,BILSTM-ATT,Bertbilstm比较模型实验,实验结果表明,试验仪的算法精度提高了6.17%,3.75%,2.83%,1.03%,以证明其有效性 此方法在相关分类任务中。

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