Abstract

The rapid development of Internet in recent years has led to a proliferation of social media networks as people who can gather online to share information, knowledge, and opinions. However, the network public opinion tends to generate strongly misleading and a large number of messages can cause shocks to the public once major emergencies appear. Therefore, we need to make correct prediction regarding and timely identify a potential crisis in the early warning of network public opinion. In view of this, this study fully considers the features of development and the propagation characteristics, so as to construct a network public opinion early warning index system that includes 4 first-level indicators and 13 second-level indicators. The weight of each indicator is calculated by the “CRITIC” method, so that the comprehensive evaluation value of each time point can be obtained and the early warning level of internet public opinion can be divided. Then, the Back Propagation neural network based on Genetic Algorithm (GA-BP) is used to establish a network public opinion early warning model. Finally, the major public health emergency, COVID-19 pandemic, is taken as a case for empirical analysis. The results show that by comparing with the traditional classification methods, such as BP neural network, decision tree, random forest, support vector machine and naive Bayes, GA-BP neural network has a higher accuracy rate for early warning of network public opinion. Consequently, the index system and early warning model constructed in this study have good feasibility and can provide references for related research on internet public opinion.

Highlights

  • Major emergencies are often hard to predict, influence widely, with a complex situation, high sensitivity, and serious consequences [5]

  • The CRITIC method is used to determine the weight of each index and divide the warning level of each time point by calculating the comprehensive evaluation index

  • The network public opinion warning index system for major emergencies is constructed in this study includes 4 first-level indexes and 13 second-level indexes

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Summary

Introduction

Major emergencies are often hard to predict, influence widely, with a complex situation, high sensitivity, and serious consequences [5]. It will inevitably give rise to adverse reactions to the public and serious harm to society. In this case, the government needs to set out corresponding measures to deal with major emergencies. During the occurrence of major emergencies, people will express opinion and spread speech on the Internet. It is because the number of speakers on the Internet has greatly increased with the rapid development of network systems and the spread of information technology [15]. In the whole network environment, vital emergent events tend to enjoy a multitude of

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