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IndicSafe: A Benchmark for Evaluating Multilingual LLM Safety in South Asia

arXiv:2603.1791586.71 citationsh-index: 7
Predicted impact top 55% in CL · last 90 daysOriginality Incremental advance
AI Analysis

This addresses safety gaps for over 1.2 billion speakers in South Asia, providing a novel benchmark for culturally informed evaluation.

The paper tackled the problem of evaluating large language model safety in culturally diverse, low-resource Indic languages, revealing significant safety drift with cross-language agreement at 12.8% and SAFE rate variance over 17% across 12 languages.

As large language models (LLMs) are deployed in multilingual settings, their safety behavior in culturally diverse, low-resource languages remains poorly understood. We present the first systematic evaluation of LLM safety across 12 Indic languages, spoken by over 1.2 billion people but underrepresented in LLM training data. Using a dataset of 6,000 culturally grounded prompts spanning caste, religion, gender, health, and politics, we assess 10 leading LLMs on translated variants of the prompt. Our analysis reveals significant safety drift: cross-language agreement is just 12.8\%, and \texttt{SAFE} rate variance exceeds 17\% across languages. Some models over-refuse benign prompts in low-resource scripts, overflag politically sensitive topics, while others fail to flag unsafe generations. We quantify these failures using prompt-level entropy, category bias scores, and multilingual consistency indices. Our findings highlight critical safety generalization gaps in multilingual LLMs and show that safety alignment does not transfer evenly across languages. We release \textsc{IndicSafe}, the first benchmark to enable culturally informed safety evaluation for Indic deployments, and advocate for language-aware alignment strategies grounded in regional harms.

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