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HarmPot: An Annotation Framework for Evaluating Offline Harm Potential of Social Media Text
March 19, 2024, 4:53 a.m. | Ritesh Kumar, Ojaswee Bhalla, Madhu Vanthi, Shehlat Maknoon Wani, Siddharth Singh
cs.CL updates on arXiv.org arxiv.org
Abstract: In this paper, we discuss the development of an annotation schema to build datasets for evaluating the offline harm potential of social media texts. We define "harm potential" as the potential for an online public post to cause real-world physical harm (i.e., violence). Understanding that real-world violence is often spurred by a web of triggers, often combining several online tactics and pre-existing intersectional fissures in the social milieu, to result in targeted physical violence, we …
abstract annotation arxiv build cs.cl datasets development discuss framework harm media offline paper public schema social social media text type world
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