Analyzing Societal Impact of COVID-19: A Study During the Early Days of the Pandemic
Swaroop Gowdra Shanthakumar, Anand Seetharam, and Arti Ramesh

TL;DR
This study analyzes Twitter data during the early COVID-19 pandemic to understand societal reactions, concerns, and sentiments, using linguistic, sentiment, and topic modeling techniques to categorize and interpret public discourse.
Contribution
It introduces a comprehensive methodology combining hashtag categorization, sentiment analysis, semantic role labeling, and topic modeling to analyze societal impact during COVID-19.
Findings
People reacted positively to school closures.
Negative reactions were observed towards panic buying.
The developed models effectively categorize and analyze COVID-related tweets.
Abstract
In this paper, we collect and study Twitter communications to understand the societal impact of COVID-19 in the United States during the early days of the pandemic. With infections soaring rapidly, users took to Twitter asking people to self isolate and quarantine themselves. Users also demanded closure of schools, bars, and restaurants as well as lockdown of cities and states. We methodically collect tweets by identifying and tracking trending COVID-related hashtags. We first manually group the hashtags into six main categories, namely, 1) General COVID, 2) Quarantine, 3) Panic Buying, 4) School Closures, 5) Lockdowns, and 6) Frustration and Hope}, and study the temporal evolution of tweets in these hashtags. We conduct a linguistic analysis of words common to all hashtag groups and specific to each hashtag group and identify the chief concerns of people as the pandemic gripped the…
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