Negative emotion diffusion and intervention countermeasures of social networks based on deep learning

Author:

Cheng Qiuyun1,Ke Yun2,Abdelmouty Ahmed3

Affiliation:

1. School of Intelligent Engineering, Zhengzhou University of Aeronautics, Henan Zhengzhou, China

2. Wuhan Technology and Business University College of Humanity&Law, Wuhan, China

3. Faculty of Computers and Informatics, Zagazig University, Alsharkiya, Egypt

Abstract

Aiming at the limitation of using only word features in traditional deep learning sentiment classification, this paper combines topic features with deep learning models to build a topic-fused deep learning sentiment classification model. The model can fuse topic features to obtain high-quality high-level text features. Experiments show that in binary sentiment classification, the highest classification accuracy of the model can reach more than 90%, which is higher than that of commonly used deep learning models. This paper focuses on the combination of deep neural networks and emerging text processing technologies, and improves and perfects them from two aspects of model architecture and training methods, and designs an efficient deep network sentiment analysis model. A CNN (Convolutional Neural Network) model based on polymorphism is proposed. The model constructs the CNN input matrix by combining the word vector information of the text, the emotion information of the words, and the position information of the words, and adjusts the importance of different feature information in the training process by means of weight control. The multi-objective sample data set is used to verify the effectiveness of the proposed model in the sentiment analysis task of related objects from the classification effect and training performance.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference19 articles.

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1. Artificial Intelligence Technology-Based Semantic Sentiment Analysis on Network Public Opinion Texts;International Journal of Information Technologies and Systems Approach;2023-02-16

2. Interpretable Image Recognition Models for Big Data With Prototypes and Uncertainty;International Journal of Information Technologies and Systems Approach;2023-02-10

3. $p$-Norm Broad Learning for Negative Emotion Classification in Social Networks;Big Data Mining and Analytics;2022-09

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