面向产品评论情感分析的集成多模型学习

K. Mouthami, S. Anandamurugan, S. Ayyasamy
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引用次数: 2

摘要

在过去的十年里,社交媒体和网站上产生了大量的评论文本。在情感分析时代,通过深度学习技术挖掘情感倾向在评论中的作用,有助于及时将情感文本分类为积极、消极和中性。情感分析是一项基于文本数据预测人们对产品评论意见的任务,它既是一项有价值的任务,也是一项具有挑战性的任务。本研究利用一种新颖的基于深度学习的预测框架,将其应用于分析产品评论和用户意见信息。首先,训练集使用BERT和FLAIR嵌入模型生成特征向量作为输入层,将产品评论转换为低维表示;然后将该向量作为一种新的混合双向长短期记忆模型(Bi-LS TM)和双向门控循环单元模型(Bi-GRU)的输入,将其组合成一个单一的体系结构来预测特征。最后,使用softmax分类器对处理后的上下文信息进行分类。结果表明,我们的模型非常准确。
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BERT-BiLSTM-BiGRU-CRF: Ensemble Multi Models Learning for Product Review Sentiment Analysis
In the last decade, large numbers of comment texts have been generated on social media and websites. In the era of sentiment analysis, mining the role of emotional tendency in comments through deep learning technology is helpful for the timely classification of sentiment text as positive, negative, and neutral. Sentiment analysis is a task that predicts people's opinions on product reviews based on text data, and it's both a valuable and challenging task. This research study has utilized a novel deep learning based predictive framework, which is applied in analyzing the product reviews along with user opinion information. Firstly, the training set generates character vectors as input layers by using Bidirectional Encoder Representation of Transformers (BERT) and FLAIR embedding models, which are used to convert the product review into low-dimensional representation; and then uses this vector as input to a novel hybrid Bidirectional Long-Short-term memory model (Bi-LS TM) and Bidirectional Gated recurrent unit model (Bi-GRU), which are combined into a single architecture to predict the feature. Finally, the processed context information is classified using the softmax classifier. The resultant review shows the significant accuracy of our model.
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