Research into a risk assessment model for online public opinions based on big data: random forest and logistic model Online publication date: Wed, 10-Jan-2024
by Danhui Dong
International Journal of Data Science (IJDS), Vol. 9, No. 1, 2024
Abstract: The current risk assessment index system for online public opinions has some deficiencies; therefore, the risk assessment method for online public opinions has some disadvantages. In order to overcome these disadvantages, this research attempts to propose a risk assessment model for online public opinions based on a random forest and logistic model, and then the risks of online public opinions can be evaluated effectively. With the incident of "patient relatives purposefully hurting doctors at Beijing Civil Aviation General Hospital" as the research object, a systematic analysis was conducted in this research on the model indexes. The critical risk indexes of online public opinions are confirmed; sensitivity, reporting speed, reporting frequency, emotional tendency, satisfaction, and timeliness of the processing process are the main factors affecting the risk of online public opinions. The results can provide practical reference for the development trend and risk assessment of online public opinions.
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