Abstract
AbstractOnly the label corresponding to the maximum value of the fully connected layer is used as the output category when a neural network performs classification tasks. When the maximum value of the fully connected layer is close to the sub-maximum value, the classification obtained by considering only the maximum value and ignoring the sub-maximum value is not completely accurate. To reduce the noise and improve classification accuracy, combining the principles of fuzzy reasoning, this paper integrates all the output results of the fully connected layer with the emotional tendency of the text based on the dictionary to establish a multi-modal fuzzy recognition emotion enhancement model. The provided model considers the enhancement effect of negative words, degree adverbs, exclamation marks, and question marks based on the smallest subtree on the emotion of emotional words, and defines the global emotional membership function of emojis based on the corpus. Through comparing the results of CNN, LSTM, BiLSTM and GRU on Weibo and Douyin, it is shown that the provided model can effectively improve the text emotion recognition when the neural network output result is not clear, especially for long texts.
Funder
National Natural Science Foundation of China
Doctor Training Program of Chongqing University of Posts and Telecommunications
Publisher
Springer Science and Business Media LLC
Subject
General Earth and Planetary Sciences,General Environmental Science
Reference45 articles.
1. Wang X, Kou L, Sugumaran V et al (2020) Emotion correlation mining through deep learning models on natural language text. IEEE Trans Cybern 99:1–14
2. Pavan MC, Dos Santos VG, Lan AGJ et al (2020) Morality classification in natural language text. IEEE Trans Affect Comput 99:1
3. Ayari N, Abdelkawy H, Chibani A et al (2020) Hybrid model-based emotion contextual recognition for cognitive assistance services. IEEE Trans Cybern 1–10
4. Gao Y, Gong M, Xie Y et al (2021) An attention-based unsupervised adversarial model for movie review spam detection. IEEE Trans Multimed 23:784–796
5. Yao X, She D, Zhang H et al (2021) Adaptive deep metric learning for affective image retrieval and classification. IEEE Trans Multimed 23:1640–1653
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献