Md Shariq Farhan
2025
Hyderabadi Pearls at Multilingual Counterspeech Generation : HALT : Hate Speech Alleviation using Large Language Models and Transformers
Md Shariq Farhan
Proceedings of the First Workshop on Multilingual Counterspeech Generation
Md Shariq Farhan
Proceedings of the First Workshop on Multilingual Counterspeech Generation
This paper explores the potential of using fine- tuned Large Language Models (LLMs) for generating counter-narratives (CNs) to combat hate speech (HS). We focus on English and Basque, leveraging the ML_MTCONAN_KN dataset, which provides hate speech and counter-narrative pairs in multiple languages. Our study compares the performance of Mis- tral, Llama, and a Llama-based LLM fine- tuned on a Basque language dataset for CN generation. The generated CNs are evalu- ated using JudgeLM (a LLM to evaluate other LLMs in open-ended scenarios) along with traditional metrics such as ROUGE-L, BLEU, BERTScore, and other traditional metrics. The results demonstrate that fine-tuned LLMs can produce high-quality contextually relevant CNs for low-resource languages that are comparable to human-generated responses, offering a sig- nificant contribution to combating online hate speech across diverse linguistic settings.