Demographic Representation and Collective Storytelling in the Me Too
Twitter Hashtag Activism Movement
- URL: http://arxiv.org/abs/2010.06472v1
- Date: Tue, 13 Oct 2020 15:25:33 GMT
- Title: Demographic Representation and Collective Storytelling in the Me Too
Twitter Hashtag Activism Movement
- Authors: Aaron Mueller, Zach Wood-Doughty, Silvio Amir, Mark Dredze, Alicia L.
Nobles
- Abstract summary: The # movement on Twitter has drawn attention to the pervasive nature of sexual harassment and violence.
We examine online # conversations across gender and racial/ethnic identities.
We find that tweets authored by white women were overrepresented in the movement compared to other demographics.
- Score: 17.672730162091526
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The #MeToo movement on Twitter has drawn attention to the pervasive nature of
sexual harassment and violence. While #MeToo has been praised for providing
support for self-disclosures of harassment or violence and shifting societal
response, it has also been criticized for exemplifying how women of color have
been discounted for their historical contributions to and excluded from
feminist movements. Through an analysis of over 600,000 tweets from over
256,000 unique users, we examine online #MeToo conversations across gender and
racial/ethnic identities and the topics that each demographic emphasized. We
found that tweets authored by white women were overrepresented in the movement
compared to other demographics, aligning with criticism of unequal
representation. We found that intersected identities contributed differing
narratives to frame the movement, co-opted the movement to raise visibility in
parallel ongoing movements, employed the same hashtags both critically and
supportively, and revived and created new hashtags in response to pivotal
moments. Notably, tweets authored by black women often expressed emotional
support and were critical about differential treatment in the justice system
and by police. In comparison, tweets authored by white women and men often
highlighted sexual harassment and violence by public figures and weaved in more
general political discussions. We discuss the implications of work for digital
activism research and design including suggestions to raise visibility by those
who were under-represented in this hashtag activism movement. Content warning:
this article discusses issues of sexual harassment and violence.
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