Leveraging the Potential of Prompt Engineering for Hate Speech Detection in Low-Resource Languages
Ruhina Tabasshum Prome (Bangladesh Institute of Governance, Management), Tarikul Islam Tamiti (George Mason University), Anomadarshi Barua (George Mason University)

TL;DR
This paper explores innovative prompt engineering strategies, especially metaphor prompting, to improve hate speech detection in low-resource languages like Bengali, using large language models and comparing with traditional embedding methods.
Contribution
It introduces a novel metaphor prompting technique to enhance hate speech detection in low-resource languages, addressing safety and safety mechanism challenges of LLMs.
Findings
Metaphor prompting outperforms other strategies in low-resource languages.
Prompting strategies improve detection accuracy across multiple languages.
Environmental impact assessments show efficient resource usage.
Abstract
The rapid expansion of social media leads to a marked increase in hate speech, which threatens personal lives and results in numerous hate crimes. Detecting hate speech presents several challenges: diverse dialects, frequent code-mixing, and the prevalence of misspelled words in user-generated content on social media platforms. Recent progress in hate speech detection is typically concentrated on high-resource languages. However, low-resource languages still face significant challenges due to the lack of large-scale, high-quality datasets. This paper investigates how we can overcome this limitation via prompt engineering on large language models (LLMs) focusing on low-resource Bengali language. We investigate six prompting strategies - zero-shot prompting, refusal suppression, flattering the classifier, multi-shot prompting, role prompting, and finally our innovative metaphor prompting…
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Taxonomy
TopicsHate Speech and Cyberbullying Detection · Sentiment Analysis and Opinion Mining · Spam and Phishing Detection
