Online Discourse in the Context of COVID-19, the First Health Crisis in China after the Advent of Mobile Social Media: A Content Analysis of China’s Weibo and Baidu
Abstract
:1. Introduction
1.1. Usage of Internet and Social Networks in Chinese Society
1.2. Social Networks and Search Engines in the Face of Health Emergencies
2. Materials and Methods
- identify and categorise the topics of greatest interest published in Baidu and Weibo,
- analyse the content derived from searches and posts in Baidu and Weibo,
- conduct a sentiment analysis based on the topics searched and posted in Baidu and Weibo,
- compare the topics identified during the COVID-19 period in comparison to a non-COVID-19 period.
- Period 1: Detection of COVID-19 confirmed cases: 15 December to 5 January (500 or less cases confirmed).
- Period 2: Emergence and growth in COVID-19 confirmed cases: 6 January to 1 March (501–80,000 cases confirmed).
- Period 3: Stabilisation of COVID-19 confirmed cases: 2 March to 15 March (80.001–81.000 cases confirmed).
- Extra-period Non-COVID-19: August 2019 (0 cases confirmed).
- Social: Related to those topics that deal with social gossip and lifestyle facts and stories related to local Chinese celebrities and prominent leaders of opinion and politicians.
- National news: Includes those topics related to relevant information on social, cultural, political, and daily aspects of interest within China.
- International news: Includes those topics related to relevant information and activity on social, cultural, political, and daily aspects of interest originating from outside of China, on an international level.
- Economy: Related to topics in reference to the state of the economy in China.
- Chinese New Year (CNY): Relates to topics associated to the new year celebrations in China.
- COVID-19: Relates to topics associated to the coronavirus outbreak.
3. Results
3.1. Weibo Content Analysis
3.2. Baidu Content Analysis
3.3. Sentiment Analysis
- There was a higher occurrence of topics with negative sentiment related to COVID-19 published on both Baidu and Weibo when compared with social topics published during the same period on both platforms.
- There was a consistently higher level of neutral sentiment topics published on both Weibo and Baidu, in relation to social orientated information and general news topics, during the period of analysis of the investigation, in comparison with COVID-19 related topics on both online platforms, Weibo and Baidu.
- During the period of investigation, the results indicated a higher percentage of positive sentiment topics related to COVID in comparison to topics of general news orientation, for both Baidu and Weibo.
4. Discussion and Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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App | Monthly Active Users (Millions) |
---|---|
983.18 | |
419.62 | |
Baidu | 373.28 |
Period 1: Detection of COVID-19 Confirmed Cases: 15 December to 5 January (500 or Less Cases Confirmed) |
16 December 2019—The first documented admission to a hospital in the city of Wuhan China. |
31 December 2019—Chinese authorities inform WHO’s China office of pneumonia cases in Wuhan City, Hubei province, China, with unknown cause. |
1 January—Officials close the Huanan seafood market, suspected to be the source of the mystery disease, as some of the patients presenting with the pneumonia-like illness were dealers or vendors at the market. |
3 January—China reports a total of 44 suspected patients with the mystery disease. |
Period 2: Emergence and Growth in COVID-19 Confirmed Cases: 6 January to 1 March (501–80,000 Cases Confirmed) |
7 January—China identifies the new coronavirus as cause of the outbreak. |
9 January—China reports the first death linked to the new coronavirus, COVID-19. |
12 January—China shares the genetic sequence of the novel coronavirus, helping countries in testing and tracing any potentially infected people. |
18–19 January—Chinese authorities report a spike in COVID-19 cases, including the first confirmed cases in Shenzhen (1 case) and Beijing (2 cases), bringing the total to 204 confirmed cases. |
21 January—WHO confirms human-to-human transmission of the virus. The total number of cases is now 222, including infections among health-care workers. Chinese authorities have also reported a fourth death. |
23 January—The city of Wuhan shuts down public transportation, closing the airport and railway stations. |
30 January—WHO declares the COVID-19 outbreak a public health emergency of international concern. |
1 February—In China, the confirmed cases now total 14,380 and the death toll rises above 300. |
7 February—Li Wenliang, who tried to raise the alarm on COVID-19 in December, dies. His death causes further angry sentiments in China, where he has been hailed a hero, with some calling for “freedom of speech” in a country where communication is tightly controlled by the government. |
1 March—China has 79,968 confirmed cases (579 new) 2873 deaths (35 new). |
Period 3: Stabilisation of COVID-19 Confirmed Cases: 2 March to 15 March (80.001–81.000 Cases Confirmed) |
3 March—China confirms 125 new cases, the lowest number of new cases since January, bringing the total number to 80,151. A total of 31 new deaths were also confirmed, bringing the total to 2943. |
11 March—WHO declares the global COVID-19 outbreak a pandemic. |
14 March—China reported 20 new cases, up from 11 cases a day earlier. 16 of the cases were overseas travelers. In response, the Beijing authorities announced that everyone arriving from overseas would be quarantined for 14 days. |
Baidu | Positive | Neutral | Negative |
COVID | 25% | 35% | 40% |
Social | 15% | 52% | 33% |
Dif. COVID/Social | 10% | −17% | 7% |
News | 9% | 55% | 36% |
Dif. COVID/News | 16% | −20% | 4% |
Positive | Neutral | Negative | |
COVID | 26% | 28% | 45% |
Social | 31% | 60% | 8% |
Dif. COVID/Social | −5% | −32% | 37% |
News | 11% | 33% | 56% |
Dif. COVID/News | 15% | −5% | −10% |
Topic Category | Period 1 | Period 2 | Period 3 | |||
---|---|---|---|---|---|---|
Baidu | Baidu | Baidu | ||||
Social news | 90% | 63% | 16% | 10% | 65% | 30% |
National news (China) | 0% | 10% | 10% | 9% | 5% | 5% |
International news | 0% | 0% | 10% | 18% | 10% | 15% |
Economy | 0% | 7% | 0% | 5% | 0% | 0% |
Chinese New Year (CNY) | 10% | 17% | 3% | 8% | 0% | 0% |
COVID-19 | 0% | 3% | 61% | 51% | 20% | 50% |
Total | 100% | 100% | 100% | 100% | 100% | 100% |
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Carvajal-Miranda, C.; Mañas-Viniegra, L.; Liang, L. Online Discourse in the Context of COVID-19, the First Health Crisis in China after the Advent of Mobile Social Media: A Content Analysis of China’s Weibo and Baidu. Soc. Sci. 2020, 9, 167. https://doi.org/10.3390/socsci9100167
Carvajal-Miranda C, Mañas-Viniegra L, Liang L. Online Discourse in the Context of COVID-19, the First Health Crisis in China after the Advent of Mobile Social Media: A Content Analysis of China’s Weibo and Baidu. Social Sciences. 2020; 9(10):167. https://doi.org/10.3390/socsci9100167
Chicago/Turabian StyleCarvajal-Miranda, Christian, Luis Mañas-Viniegra, and Li Liang. 2020. "Online Discourse in the Context of COVID-19, the First Health Crisis in China after the Advent of Mobile Social Media: A Content Analysis of China’s Weibo and Baidu" Social Sciences 9, no. 10: 167. https://doi.org/10.3390/socsci9100167
APA StyleCarvajal-Miranda, C., Mañas-Viniegra, L., & Liang, L. (2020). Online Discourse in the Context of COVID-19, the First Health Crisis in China after the Advent of Mobile Social Media: A Content Analysis of China’s Weibo and Baidu. Social Sciences, 9(10), 167. https://doi.org/10.3390/socsci9100167