CLApr 17, 2025

ELAB: Extensive LLM Alignment Benchmark in Persian Language

arXiv:2504.12553v13 citationsh-index: 20Has Code
Originality Synthesis-oriented
AI Analysis

It addresses the gap in culturally grounded alignment evaluation for Persian LLMs, which is incremental as it adapts and extends existing methods to a new domain.

This paper tackles the problem of evaluating the alignment of Persian Large Language Models with ethical dimensions like safety, fairness, and social norms by creating a comprehensive benchmark that adapts existing frameworks to Persian linguistic and cultural contexts, resulting in a publicly available leaderboard for systematic evaluation.

This paper presents a comprehensive evaluation framework for aligning Persian Large Language Models (LLMs) with critical ethical dimensions, including safety, fairness, and social norms. It addresses the gaps in existing LLM evaluation frameworks by adapting them to Persian linguistic and cultural contexts. This benchmark creates three types of Persian-language benchmarks: (i) translated data, (ii) new data generated synthetically, and (iii) new naturally collected data. We translate Anthropic Red Teaming data, AdvBench, HarmBench, and DecodingTrust into Persian. Furthermore, we create ProhibiBench-fa, SafeBench-fa, FairBench-fa, and SocialBench-fa as new datasets to address harmful and prohibited content in indigenous culture. Moreover, we collect extensive dataset as GuardBench-fa to consider Persian cultural norms. By combining these datasets, our work establishes a unified framework for evaluating Persian LLMs, offering a new approach to culturally grounded alignment evaluation. A systematic evaluation of Persian LLMs is performed across the three alignment aspects: safety (avoiding harmful content), fairness (mitigating biases), and social norms (adhering to culturally accepted behaviors). We present a publicly available leaderboard that benchmarks Persian LLMs with respect to safety, fairness, and social norms at: https://huggingface.co/spaces/MCILAB/LLM_Alignment_Evaluation.

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