Effectiveness of Counter-Speech against Abusive Content: A Multidimensional Annotation and Classification Study
Effectiveness of Counter-Speech against Abusive Content: A Multidimensional Annotation and Classification Study
Counter-speech (CS) is a key strategy for mitigating online Hate Speech (HS), yet defining the criteria to assess its effectiveness remains an open challenge. We propose a novel computational framework for CS effectiveness classification, grounded in social science concepts. Our framework defines six core dimensions - Clarity, Evidence, Emotional Appeal, Rebuttal, Audience Adaptation, and Fairness - which we use to annotate 4,214 CS instances from two benchmark datasets, resulting in a novel linguistic resource released to the community. In addition, we propose two classification strategies, multi-task and dependency-based, achieving strong results (0.94 and 0.96 average F1 respectively on both expert- and user-written CS), outperforming standard baselines, and revealing strong interdependence among dimensions.
Greta Damo、Elena Cabrio、Serena Villata
语言学
Greta Damo,Elena Cabrio,Serena Villata.Effectiveness of Counter-Speech against Abusive Content: A Multidimensional Annotation and Classification Study[EB/OL].(2025-06-13)[2025-06-28].https://arxiv.org/abs/2506.11919.点此复制
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