#Coronavirus or #Chinesevirus?!: Understanding the negative sentiment
reflected in Tweets with racist hashtags across the development of COVID-19
- URL: http://arxiv.org/abs/2005.08224v1
- Date: Sun, 17 May 2020 11:15:50 GMT
- Title: #Coronavirus or #Chinesevirus?!: Understanding the negative sentiment
reflected in Tweets with racist hashtags across the development of COVID-19
- Authors: Xin Pei, Deval Mehta
- Abstract summary: We focus on the analysis of negative sentiment reflected in tweets marked with racist hashtags.
We propose a stage-based approach to capture how the negative sentiment changes along with the three development stages of COVID-19.
- Score: 1.0878040851638
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Situated in the global outbreak of COVID-19, our study enriches the
discussion concerning the emergent racism and xenophobia on social media. With
big data extracted from Twitter, we focus on the analysis of negative sentiment
reflected in tweets marked with racist hashtags, as racism and xenophobia are
more likely to be delivered via the negative sentiment. Especially, we propose
a stage-based approach to capture how the negative sentiment changes along with
the three development stages of COVID-19, under which it transformed from a
domestic epidemic into an international public health emergency and later, into
the global pandemic. At each stage, sentiment analysis enables us to recognize
the negative sentiment from tweets with racist hashtags, and keyword extraction
allows for the discovery of themes in the expression of negative sentiment by
these tweets. Under this public health crisis of human beings, this stage-based
approach enables us to provide policy suggestions for the enactment of
stage-specific intervention strategies to combat racism and xenophobia on
social media in a more effective way.
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