Liu Baitao
School of Education Science, Nanyang Normal University, Nanyang, China.
Front Psychol. 2022 Jun 30;13:852242. doi: 10.3389/fpsyg.2022.852242. eCollection 2022.
This study mainly focuses on the emotion analysis method in the application of psychoanalysis based on sentiment recognition. The method is applied to the sentiment recognition module in the server, and the sentiment recognition function is effectively realized through the improved convolutional neural network and bidirectional long short-term memory (C-BiL) model. First, the implementation difficulties of the C-BiL model and specific sentiment classification design are described. Then, the specific design process of the C-BiL model is introduced, and the innovation of the C-BiL model is indicated. Finally, the experimental results of the models are compared and analyzed. Among the deep learning models, the accuracy of the C-BiL model designed in this study is relatively high irrespective of the binary classification, the three classification, or the five classification, with an average improvement of 2.47% in Diary data set, 2.16% in Weibo data set, and 2.08% in Fudan data set. Therefore, the C-BiL model designed in this study can not only successfully classify texts but also effectively improve the accuracy of text sentiment recognition.
本研究主要聚焦于基于情感识别的精神分析应用中的情感分析方法。该方法应用于服务器中的情感识别模块,通过改进的卷积神经网络和双向长短期记忆(C-BiL)模型有效实现了情感识别功能。首先,阐述了C-BiL模型的实施难点及具体的情感分类设计。然后,介绍了C-BiL模型的具体设计过程,并指出了C-BiL模型的创新性。最后,对模型的实验结果进行了比较和分析。在深度学习模型中,本研究设计的C-BiL模型在二分类、三分类或五分类中准确率都相对较高,在日记数据集上平均提高了2.47%,在微博数据集上提高了2.16%,在复旦数据集上提高了2.08%。因此,本研究设计的C-BiL模型不仅能够成功对文本进行分类,还能有效提高文本情感识别的准确率。