Jordan Kraemer
2024
A Community-Centric Perspective for Characterizing and Detecting Anti-Asian Violence-Provoking Speech
Gaurav Verma
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Rynaa Grover
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Jiawei Zhou
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Binny Mathew
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Jordan Kraemer
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Munmun Choudhury
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Srijan Kumar
Proceedings of the 62nd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Violence-provoking speech – speech that implicitly or explicitly promotes violence against the members of the targeted community, contributed to a massive surge in anti-Asian crimes during the COVID-19 pandemic. While previous works have characterized and built tools for detecting other forms of harmful speech, like fear speech and hate speech, our work takes a community-centric approach to studying anti-Asian violence-provoking speech. Using data from ~420k Twitter posts spanning a 3-year duration (January 1, 2020 to February 1, 2023), we develop a codebook to characterize anti-Asian violence-provoking speech and collect a community-crowdsourced dataset to facilitate its large-scale detection using state-of-the-art classifiers. We contrast the capabilities of natural language processing classifiers, ranging from BERT-based to LLM-based classifiers, in detecting violence-provoking speech with their capabilities to detect anti-Asian hateful speech. In contrast to prior work that has demonstrated the effectiveness of such classifiers in detecting hateful speech (F1 = 0.89), our work shows that accurate and reliable detection of violence-provoking speech is a challenging task (F1 = 0.69). We discuss the implications of our findings, particularly the need for proactive interventions to support Asian communities during public health crises.
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Co-authors
- Gaurav Verma 1
- Rynaa Grover 1
- Jiawei Zhou 1
- Binny Mathew 1
- Munmun Choudhury 1
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