Coronavirus statistics causes emotional bias: a social media text mining perspective
Linjiang Guo, Zijian Feng, Yuxue Chi, Mingzhu Wang, Yijun Liu

TL;DR
This study uses deep learning and regression analysis to explore how different COVID-19 statistics influence public emotions and perceptions, revealing biases related to local and imported cases.
Contribution
It introduces a novel framework combining deep learning-based sentiment analysis with empirical regression to understand emotional biases from pandemic statistics.
Findings
Local cases increase risk perception
Imported cases decrease confidence levels
Healthcare spending aids recovery
Abstract
While COVID-19 has impacted humans for a long time, people search the web for pandemic-related information, causing anxiety. From a theoretic perspective, previous studies have confirmed that the number of COVID-19 cases can cause negative emotions, but how statistics of different dimensions, such as the number of imported cases, the number of local cases, and the number of government-designated lockdown zones, stimulate people's emotions requires detailed understanding. In order to obtain the views of people on COVID-19, this paper first proposes a deep learning model which classifies texts related to the pandemic from text data with place labels. Next, it conducts a sentiment analysis based on multi-task learning. Finally, it carries out a fixed-effect panel regression with outputs of the sentiment analysis. The performance of the algorithm shows a promising result. The empirical…
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Taxonomy
TopicsMisinformation and Its Impacts · Sentiment Analysis and Opinion Mining · COVID-19 epidemiological studies
