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Hated More: Online Violence Targeting Women of Color Candidates in the 2024 US Election

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  • Thakur, Dhanaraj
  • Finkel, Müge

Abstract

Women, and women of color in particular, face numerous challenges when running for political office in the U.S. These include attacks they are subject to in various online spaces that, like their peers, they must use to campaign and promote their work. These attacks often aim to undermine and prevent women’s participation in politics. These forms of abuse might contribute to the underrepresentation of women of color in politics, and may also undermine the effectiveness of the US democratic system in reflecting the interest and priorities of all voters in policy-making. In this research brief, we turn to the 2024 U.S. elections to examine the nature of offensive speech and hate speech that candidates running for Congress are subject to on the social media platform X (formerly Twitter), which remains an important forum for political candidates. More specifically, we compare the levels of offensive speech and hate speech that different groups of Congressional candidates are targeted with based on race and gender, with a particular emphasis on women of color. We also examine these factors for U.S. Vice President Kamala Harris as a woman of color and presidential candidate.

Suggested Citation

  • Thakur, Dhanaraj & Finkel, Müge, 2024. "Hated More: Online Violence Targeting Women of Color Candidates in the 2024 US Election," OSF Preprints d78zk, Center for Open Science.
  • Handle: RePEc:osf:osfxxx:d78zk
    DOI: 10.31219/osf.io/d78zk
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