On Xing Tian and the Perseverance of Anti-China Sentiment Online
- URL: http://arxiv.org/abs/2204.08935v1
- Date: Tue, 19 Apr 2022 15:17:28 GMT
- Title: On Xing Tian and the Perseverance of Anti-China Sentiment Online
- Authors: Xinyue Shen, Xinlei He, Michael Backes, Jeremy Blackburn, Savvas
Zannettou, Yang Zhang
- Abstract summary: We analyze 8B posts from Reddit and 206M posts from 4chan's /pol/ between 2016 and 2021.
We find that, anti-Chinese content may be evoked by political events not directly related to China.
We also show that the semantic meaning of the words "China" and "Chinese" are shifting towards Sinophobic slurs with the rise of COVID-19.
- Score: 20.92283195451941
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Sinophobia, anti-Chinese sentiment, has existed on the Web for a long time.
The outbreak of COVID-19 and the extended quarantine has further amplified it.
However, we lack a quantitative understanding of the cause of Sinophobia as
well as how it evolves over time. In this paper, we conduct a large-scale
longitudinal measurement of Sinophobia, between 2016 and 2021, on two
mainstream and fringe Web communities. By analyzing 8B posts from Reddit and
206M posts from 4chan's /pol/, we investigate the origins, evolution, and
content of Sinophobia. We find that, anti-Chinese content may be evoked by
political events not directly related to China, e.g., the U.S. withdrawal from
the Paris Agreement. And during the COVID-19 pandemic, daily usage of
Sinophobic slurs has significantly increased even with the hate-speech ban
policy. We also show that the semantic meaning of the words "China" and
"Chinese" are shifting towards Sinophobic slurs with the rise of COVID-19 and
remain the same in the pandemic period. We further use topic modeling to show
the topics of Sinophobic discussion are pretty diverse and broad. We find that
both Web communities share some common Sinophobic topics like ethnics,
economics and commerce, weapons and military, foreign relations, etc. However,
compared to 4chan's /pol/, more daily life-related topics including food, game,
and stock are found in Reddit. Our finding also reveals that the topics related
to COVID-19 and blaming the Chinese government are more prevalent in the
pandemic period. To the best of our knowledge, this paper is the longest
quantitative measurement of Sinophobia.
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