Capturing the Interplay between Risk Perception and Social Media Posting to Support Risk Response and Decision Making
Abstract
:1. Introduction
2. Literature Review
2.1. Risk Perception
2.2. The Role of Media
2.3. Social Media Data
2.4. Social Media Posting and Risk Perception
3. Materials and Methods
3.1. Social Media Data
3.2. Risk Perception Data
3.3. Granger Causality Analysis and Impulse Response Functions
4. Results
4.1. The Results of Granger Causality Tests
4.2. The Results of Impulse Response Functions
4.2.1. Social Media Users’ Posting Affecting Risk Perception
4.2.2. Risk Perception Affecting Social Media Users’ Posting
5. Discussion
5.1. Social Media Users’ Posting Affecting Risk Perception
5.2. Risk Perception Affecting Social Media Users’ Posting
5.3. Limitation and Future Work
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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No. | Conclusions and Reference | Data Sources |
---|---|---|
1 | Social media posting correlated with the level of risk perception Changes in the volume of information in social media are followed by changes in risk perception [3]. | Twitter and Questionnaire |
2 | Changes in risk perceptions are followed by changes in social media posting and reposting behavior [23]. | Sina Weibo |
3 | Posting information on social media is positively associated with risk perceptions [43]. | Questionnaire |
4 | Posting and receiving risk information not only affected risk perceptions but also directly or indirectly influenced preventive behavioral intentions [35]. | Questionnaire |
Type of Users | Number of Users | Number of Microblogs | Average Number of Microblogs Per User | Minimum Number of Microblogs Per User | Maximum Number of Microblogs Per User |
---|---|---|---|---|---|
Government | 292 | 4900 | 16.78 | 1 | 840 |
Media | 237 | 28,985 | 122.30 | 1 | 8208 |
Public | 14,017 | 31,552 | 2.25 | 1 | 589 |
Others | 661 | 6971 | 10.55 | 1 | 1731 |
Variable Type | Variable | Definition |
---|---|---|
Endogenous variables | Risk perception, expressed by Baidu Search Index within time window | |
The volume of government’s posting within time window | ||
The volume of media’s posting within time window | ||
The volume of public’s posting within time window | ||
The volume of other users’ posting within time window | ||
Exogenous variables | The number of new cases within the time window |
Null Hypothesis | Lag Length | F-Value, p-Value | Results |
---|---|---|---|
Risk perception is not the Granger reason for government’s posting. | Two days | 3.523, 0.172 | Accept |
Government’s posting is not the Granger reason for risk perception. | Two days | 6.5978, 0.037 | Reject |
Risk perception is not the Granger reason for media’s posting. | One day | 8.2307, 0.004 | Reject |
Media’s posting is not the Granger reason for risk perception. | One day | 5.0754, 0.024 | Reject |
Risk perception is not the Granger reason for public’s posting. | One day | 7.8697, 0.005 | Reject |
Public’s posting is not the Granger reason for risk perception. | One day | 0.05545, 0.814 | Accept |
Risk perception is not the Granger reason for other users’ posting. | Two days | 4.1178, 0.128 | Accept |
Other users’ posting is not the Granger reason for risk perception. | Two days | 7.7616, 0.021 | Reject |
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Zhu, H.; Liu, K. Capturing the Interplay between Risk Perception and Social Media Posting to Support Risk Response and Decision Making. Int. J. Environ. Res. Public Health 2021, 18, 5220. https://doi.org/10.3390/ijerph18105220
Zhu H, Liu K. Capturing the Interplay between Risk Perception and Social Media Posting to Support Risk Response and Decision Making. International Journal of Environmental Research and Public Health. 2021; 18(10):5220. https://doi.org/10.3390/ijerph18105220
Chicago/Turabian StyleZhu, Huiyun, and Kecheng Liu. 2021. "Capturing the Interplay between Risk Perception and Social Media Posting to Support Risk Response and Decision Making" International Journal of Environmental Research and Public Health 18, no. 10: 5220. https://doi.org/10.3390/ijerph18105220
APA StyleZhu, H., & Liu, K. (2021). Capturing the Interplay between Risk Perception and Social Media Posting to Support Risk Response and Decision Making. International Journal of Environmental Research and Public Health, 18(10), 5220. https://doi.org/10.3390/ijerph18105220