Psychometric Analysis and Coupling of Emotions Between State Bulletins
and Twitter in India during COVID-19 Infodemic
- URL: http://arxiv.org/abs/2005.05513v2
- Date: Wed, 13 May 2020 16:47:44 GMT
- Title: Psychometric Analysis and Coupling of Emotions Between State Bulletins
and Twitter in India during COVID-19 Infodemic
- Authors: Baani Leen Kaur Jolly, Palash Aggrawal, Amogh Gulati, Amarjit Singh
Sethi, Ponnurangam Kumaraguru, Tavpritesh Sethi
- Abstract summary: COVID-19 infodemic has been spreading faster than the pandemic itself.
Since social media is the largest source of information, managing the infodemic requires mitigating of misinformation.
Twitter alone has seen a sharp 45% increase in the usage of its curated events page.
- Score: 7.428097999824421
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: COVID-19 infodemic has been spreading faster than the pandemic itself. The
misinformation riding upon the infodemic wave poses a major threat to people's
health and governance systems. Since social media is the largest source of
information, managing the infodemic not only requires mitigating of
misinformation but also an early understanding of psychological patterns
resulting from it. During the COVID-19 crisis, Twitter alone has seen a sharp
45% increase in the usage of its curated events page, and a 30% increase in its
direct messaging usage, since March 6th 2020. In this study, we analyze the
psychometric impact and coupling of the COVID-19 infodemic with the official
bulletins related to COVID-19 at the national and state level in India. We look
at these two sources with a psycho-linguistic lens of emotions and quantified
the extent and coupling between the two. We modified path, a deep skip-gram
based open-sourced lexicon builder for effective capture of health-related
emotions. We were then able to capture the time-evolution of health-related
emotions in social media and official bulletins. An analysis of lead-lag
relationships between the time series of extracted emotions from official
bulletins and social media using Granger's causality showed that state
bulletins were leading the social media for some emotions such as Medical
Emergency. Further insights that are potentially relevant for the policymaker
and the communicators actively engaged in mitigating misinformation are also
discussed. Our paper also introduces CoronaIndiaDataset2, the first social
media based COVID-19 dataset at national and state levels from India with over
5.6 million national and 2.6 million state-level tweets. Finally, we present
our findings as COVibes, an interactive web application capturing psychometric
insights captured upon the CoronaIndiaDataset, both at a national and state
level.
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