When AI Takes Sides on Questions of Faith: Persistent Asymmetries in AI-Mediated Faith Guidance 文章

ArXiv CS.CL2026-05-29NEWSen作者: Brett Israelsen, Sheryl Carty, Josh Coates, Nancy Fulda, Julie Park, Pete Whiting

摘要

arXiv:2605.22975v2 Announce Type: replace Abstract: We ask whether large language models (LLMs) treat queries about religious conversion symmetrically. The answer is no. When asked for advice on hypothetical faith transitions from religion A->B vs. religion B->A , models exhibited consistent asymmetries, favoring some religions while subtly discouraging conversion to others. On average Catholic, Bah\'a'\'i, and Sikh religions were broadly favored (high support for joining, low support for leaving), while Atheists, Agnostics, and Jehovah's Witnesses were primarily disfavored. Patterns varied by model size and model provider, with Grok 4.20 exhibiting the strongest asymmetries. We tested 20 commercial and open-source language models across 182 religion pairings using a human-verified LLM-as-judge framework. Each model was probed via interactions with a simulated user asking for advice on a potential faith conversion.

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