Cognitive Network Science Reconstructs How Experts, News Outlets and Social Media Perceived the COVID-19 Pandemic
Abstract
:1. Introduction
2. Material and Methods
2.1. Data Access: SPEECH Transcript and News Media Articles
- (1)
- Produced, published and updated between 10 March and 22 March, which is the immediate aftermath of the WHO declaration of the COVID-19 outbreak being a pandemic (dated 10 March 2020). A total of 9 out of 10 articles were produced and updated between 10 March and 12 March, guaranteeing a temporal coherence of the considered dataset, i.e., a collective of articles being produced within the same time window of the investigated Twitter dataset (see also Section 2.2);
- (2)
- As reported in their titles, all the investigated articles focused on the same news of COVID-19 being declared a pandemic by the WHO. This is an important indicator that the considered news articles did not focus on local happenings but rather analysed and interpreted the COVID-19 pandemic in light of the WHO declaration.
2.2. Data Access: Social Media Tweets
2.3. Forma Mentis Networks as Knowledge Graphs Extracted from Text
2.4. Emotional Profiling and Cognitive Datasets
3. Results
3.1. Investigating the Knowledge and Emotions in the Whole WHO Declaration
3.2. Investigating Knowledge and Emotions around “Pandemic” across Texts
4. Discussion and Conclusions
Funding
Conflicts of Interest
References
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Media ID and Link | News Outlet | Article Title | Number of Words |
---|---|---|---|
Media 1 | ABC News | What the WHO pandemic declaration means. | 748 |
Media 2 | Business Insider | The coronavirus is officially a pandemic. | 576 |
Media 3 | BBC | Coronavirus: What is a pandemic and why use the term now? | 318 |
Media 4 | Channel News Asia | Threat of coronavirus pandemic now “very real”: WHO | 553 |
Media 5 | New Scientist | COVID-19: Why won’t the WHO officially declare a coronavirus pandemic? (Updated 11 March) | 801 |
Media 6 | National Geographic | Coronavirus is officially a pandemic. | 1588 |
Media 7 | CNBC | World Health Organization declares the coronavirus outbreak a global pandemic | 939 |
Media 8 | Telegraph | Coronavirus outbreak declared a pandemic: what does it mean, and does it change anything? | 1387 |
Media 9 | Times | World Health Organization Declares COVID-19 a “Pandemic.” | 625 |
Media 10 | Washington Post | WHO declares a pandemic of coronavirus disease COVID-19 | 1035 |
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Stella, M. Cognitive Network Science Reconstructs How Experts, News Outlets and Social Media Perceived the COVID-19 Pandemic. Systems 2020, 8, 38. https://doi.org/10.3390/systems8040038
Stella M. Cognitive Network Science Reconstructs How Experts, News Outlets and Social Media Perceived the COVID-19 Pandemic. Systems. 2020; 8(4):38. https://doi.org/10.3390/systems8040038
Chicago/Turabian StyleStella, Massimo. 2020. "Cognitive Network Science Reconstructs How Experts, News Outlets and Social Media Perceived the COVID-19 Pandemic" Systems 8, no. 4: 38. https://doi.org/10.3390/systems8040038
APA StyleStella, M. (2020). Cognitive Network Science Reconstructs How Experts, News Outlets and Social Media Perceived the COVID-19 Pandemic. Systems, 8(4), 38. https://doi.org/10.3390/systems8040038