Sentiment Analysis of the Consumer Review Text Based on BERT-BiLSTM in a Social Media Environment

IF 0.8 Q4 Computer Science
Xueli Zhou
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引用次数: 0

Abstract

In this paper, a BERT-BiLSTM-based consumer review text sentiment analysis method in the e-commerce big data field is proposed. First, the unlabeled text is trained using the BERT training model for the language introduced in the deep learning, and then the pre-training model of the text data is delivered by the learning textual features and data to extract deeper vectors. Second, the BiLSTM model is applied to simultaneously obtain contextual information so as to illustrate optimal textual features. Finally, a corresponding sentiment analysis model relative to the consumer review text is constructed by combining the BERT model with BiLSTM to better merge the context for classifying sentiment and improving the final feature vector accuracy for the sentiment classification results. Simulated by experiments, the method proposed in this paper was compared with another three methods using the same data set. The results obtained indicate that the proposed method has the highest precision, recall, and F1-Measure, and the values reach 92.64%, 90.32%, and 91.46%, respectively.
社交媒体环境下基于BERT-BiLSTM的消费者评论文本情感分析
本文提出了一种基于BERT-BiLSTM的电子商务大数据领域消费者评论文本情感分析方法。首先,使用深度学习中引入的语言的BERT训练模型来训练未标记文本,然后通过学习文本特征和数据来传递文本数据的预训练模型,以提取更深层次的向量。其次,应用BiLSTM模型同时获取上下文信息,以说明最优的文本特征。最后,通过将BERT模型与BiLSTM相结合,构建了与消费者评论文本相对应的情绪分析模型,以更好地合并上下文进行情绪分类,并提高情绪分类结果的最终特征向量精度。通过实验模拟,将本文提出的方法与使用相同数据集的另外三种方法进行了比较。结果表明,该方法具有最高的精度、召回率和F1测度,其值分别达到92.64%、90.32%和91.46%。
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自引率
12.50%
发文量
29
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