SectEval: Evaluating the Latent Sectarian Preferences of Large Language Models
arXiv cs.CL / 3/16/2026
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Key Points
- The paper introduces SectEval, a benchmark with 88 questions in English and Hindi to assess how LLMs handle Sunni and Shia biases.
- It evaluates 15 top LLMs, including proprietary and open-weight models, and finds language-dependent inconsistencies in their bias.
- In English, models like DeepSeek-v3 and GPT-4o favored Shia answers, while in Hindi they shifted to Sunni, showing language-driven bias reversals.
- The study also shows location effects, with Claude-3.5 tailoring answers to Iran or Saudi Arabia, whereas smaller Hindi models tended to stick to Sunni regardless of location; the dataset is available on GitHub.
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