Public View of Public Health Emergencies Based on Artificial Intelligence Data

Author:

Zhang Shitao1,Chu-ke Chun1,Kim Hyunjoo2,Jing Changqiang3ORCID

Affiliation:

1. School of Network Communication, Zhejiang YueXiu University, Shaoxing 312000, China

2. School of Media and Communication, Kwangwoon University, Seoul 01897, Republic of Korea

3. Department of Inform, Linyi University, Linyi 276000, China

Abstract

In the current environment where the network and the real society are intertwined, the network public view of public emergencies has involved in reality and altered the ecology of communal public views in China. A new online court of influence has been created, and it affected the trend of events. As the main type of public emergencies, public health emergencies are directly related to people’s health and life insurance. Therefore, the public often pays special attention. At present, correct media guidance plays an irreplaceable and important role in calming people’s hearts and stabilizing social order. If news and public view are left unchecked, it is likely to cause panic among the people. However, in reality, public view research has always been a research object that is difficult to intelligentize and quantify. Based on such a realistic background, the article conducts a research on public view of public health emergencies based on artificial intelligence data analysis. This study designs an expert system for network public view and optimizes the algorithm for the key problem: SFC deployment. Finally, the system was put into real news and public opinion research on new coronavirus epidemic prevention, and experimental tests were carried out. The experimental results have shown that in the new coronavirus incident, the nuclear leakage incident, and the epidemic prevention policy, the data obtained by the public through the Internet are 50%, 68.06%, and 64.35%, respectively. For the system function in this study, both ICSO and IPSO are far better than the optimization results of CSO and PSO. For most of the test functions, IPSO is better than ICSO’s optimization results, which better fulfills the needs of the research content. This study will make an in-depth analysis of the evolution process of online public opinion on public emergencies from the macro-, meso-, and micro-perspectives, in order to analyze the dissemination methods and internal evolution mechanism of various public emergencies of online public opinion, which provides countermeasures and suggestions for the government to guide and manage network public opinion.

Funder

National Social Science Foundation of China

Publisher

Hindawi Limited

Subject

Health, Toxicology and Mutagenesis,Public Health, Environmental and Occupational Health

Reference27 articles.

1. Misinformation and public view of science and health: approaches, findings, and future directions;M. A. Cacciatore;Proceedings of the National Academy of Sciences,2021

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3. Public perception and reception of robotic applications in public health emergencies based on a questionnaire survey conducted during COVID-19;C. Lin;International Journal of Environmental Research and Public Health,2021

4. The influence of news comments on facebook users’ perceived public view, attribution, and own policy view;C. Soojung;Journal of Cybercommunication Academic Society,2017

5. Big Data Analysis of COVID-19 Mitigation Policy in Indonesia: Democratic, Elitist, and Artificial Intelligence

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