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RESEARCH ON SENTIMENT ANALYSIS METHOD BASED ON WEIBO COMMENTS

  • Li, Zhong-Shi (School of Economics and Management, Yanbian University) ;
  • He, Lin (College of Science major of applied statistics, Yanbian University) ;
  • Guo, Wei-Jie (College of Science major of applied statistics, Yanbian University) ;
  • Jin, Zhe-Zhi (School of Economics and Management, Yanbian University)
  • Received : 2021.06.02
  • Accepted : 2021.09.29
  • Published : 2021.09.30

Abstract

In China, Weibo is one of the social platforms with more users. It has the characteristics of fast information transmission and wide coverage. People can comment on a certain event on Weibo to express their emotions and attitudes. Judging the emotional tendency of users' comments is not only beneficial to the monitoring of the management department, but also has very high application value for rumor suppression, public opinion guidance, and marketing. This paper proposes a two-input Adaboost model based on TextCNN and BiLSTM. Use the TextCNN model that can perform local feature extraction and the BiLSTM model that can perform global feature extraction to process comment data in parallel. Finally, the classification results of the two models are fused through the improved Adaboost algorithm to improve the accuracy of text classification.

Keywords

References

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