大数据环境下基于AT-BiLSTM模型的社交网络文本情感分类

IF 0.8 Q4 Computer Science
Jinjun Liu
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引用次数: 0

摘要

为了解决现有情感分类方法对情感预测效果不佳的问题,本文提出了一种社交网络文本情感分类方法。该方法利用了专为大数据环境设计的双向短期和长期记忆模型(AT-BiLSTM)。首先,通过引入预训练的BERT模型实现文本的矢量化表示,并根据词的语义信息动态调整分类结果;然后,结合注意机制进行方面级情感分析,建立相应的AT-BiLSTM模型。最后,BERT模型随机选择用于信息屏蔽的输入标签,并对提出的模型进行预训练。该方法使用相同的数据集对三种替代方法进行了评估。结果表明,该方法的准确率、查全率和f1得分分别达到了93.72%、93.91%和92.38%。因此,与其他三种评估方法相比,所提出的方法表现出优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Classification of Social Network Text Based on AT-BiLSTM Model in a Big Data Environment
To tackle the challenge of ineffective sentiment prediction using current sentiment classification methods, this paper introduces a method social network text sentiment classification. The method leverages a bidirectional short and long-term memory model (AT-BiLSTM), specifically designed for a big data environment. First, a vectorized representation of text is realized by introducing a pre-trained BERT model, and the classification results are dynamically adjusted according to the semantic information of the words. Then, the BiLSTM combined with the attention mechanism performs aspect-level sentiment analysis, and the corresponding model AT-BiLSTM is formulated. Finally, the BERT model randomly selects input tags for information masking and pre-trains the proposed model. The proposed method was evaluated against three alternative methods using an identical dataset. The results show that the novel method achieved the highest accuracy, recall, and F1-score, reaching 93.72%, 93.91%, and 92.38%, respectively. Consequently, the proposed method demonstrates superior performance compared to the other three methods evaluated.
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12.50%
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29
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