The Domestic Yak

Auditing LLMs & Hidden Objectives

17 min · 17. mars 2025
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This episode summarizes: Auditing language models for hidden objectives by Samuel Marks Et.al. Submitted on March 14th 2025 https://arxiv.org/abs/2503.10965 [https://arxiv.org/abs/2503.10965] Investigated the feasibility of alignment audits by training a language model with a hidden objective: to exhibit behaviors it believes reward models favor, even if undesirable. Three teams successfully identified the hidden objective using techniques like interpretability tools, behavioral attacks, and training data analysis.

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