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arxiv 2311.11163 v1 pith:X5E536N2 submitted 2023-11-18 cs.SI stat.APstat.CO

Hate speech and hate crimes: a data-driven study of evolving discourse around marginalized groups

classification cs.SI stat.APstat.CO
keywords hatecrimesdiscoursegroupscommunitiesmarginalizedonlinetweets
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This study explores the dynamic relationship between online discourse, as observed in tweets, and physical hate crimes, focusing on marginalized groups. Leveraging natural language processing techniques, including keyword extraction and topic modeling, we analyze the evolution of online discourse after events affecting these groups. Examining sentiment and polarizing tweets, we establish correlations with hate crimes in Black and LGBTQ+ communities. Using a knowledge graph, we connect tweets, users, topics, and hate crimes, enabling network analyses. Our findings reveal divergent patterns in the evolution of user communities for Black and LGBTQ+ groups, with notable differences in sentiment among influential users. This analysis sheds light on distinctive online discourse patterns and emphasizes the need to monitor hate speech to prevent hate crimes, especially following significant events impacting marginalized communities.

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