Anonymous Expression in an Online Community for Women in China
- URL: http://arxiv.org/abs/2206.07923v2
- Date: Thu, 18 Aug 2022 12:47:53 GMT
- Title: Anonymous Expression in an Online Community for Women in China
- Authors: Zhixuan Zhou, Zixin Wang, Franziska Zimmer
- Abstract summary: Gender issues faced by women can range from workplace harassment to domestic violence.
While publicly disclosing these issues on social media can be hard, some may incline to express themselves anonymously.
We approached such an anonymous female community on Chinese social media where discussion on gender issues takes place.
We identified 20 issues commonly discussed, with cheating-partner, controlling parents and age anxiety taking the lead.
- Score: 1.2031796234206136
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Gender issues faced by women can range from workplace harassment to domestic
violence. While publicly disclosing these issues on social media can be hard,
some may incline to express themselves anonymously. We approached such an
anonymous female community on Chinese social media where discussion on gender
issues takes place with a qualitative content analysis. By observing anonymous
experiences contributed by female users and made publicly available by an
influencer, we identified 20 issues commonly discussed, with cheating-partner,
controlling parents and age anxiety taking the lead. The results are placed
into context with Chinese culture and expectations about gender. By describing
the results in context with the social challenges faced by women in China, and
understanding how these issues are anonymously and openly discussed by them, we
aim to motivate more policies and platform designs to accommodate the needs of
the affected population.
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