Auditing language models for hidden objectives
Abstract
We study the feasibility of conducting alignment audits: investigations into whether models have undesired objectives. As a testbed, we train a language model with a hidden objective. Our training pipeline first teaches the model about exploitable errors in RLHF reward models (RMs), then trains the model to exploit some of these errors. We verify via out-of-distribution evaluations that the model generalizes to exhibit whatever behaviors it believes RMs rate highly, including ones not reinforced during training. We leverage this model to study alignment audits in two ways. First, we conduct a blind auditing game where four teams, unaware of the model's hidden objective or training, investigate it for concerning behaviors and their causes. Three teams successfully uncovered the model's hidden objective using techniques including interpretability with sparse autoencoders (SAEs), behavioral attacks, and training data analysis. Second, we conduct an unblinded follow-up study of eight techniques for auditing the model, analyzing their strengths and limitations. Overall, our work provides a concrete example of using alignment audits to discover a model's hidden objective and proposes a methodology for practicing and validating progress in alignment auditing.
Cite
@article{arxiv.2503.10965,
title = {Auditing language models for hidden objectives},
author = {Samuel Marks and Johannes Treutlein and Trenton Bricken and Jack Lindsey and Jonathan Marcus and Siddharth Mishra-Sharma and Daniel Ziegler and Emmanuel Ameisen and Joshua Batson and Tim Belonax and Samuel R. Bowman and Shan Carter and Brian Chen and Hoagy Cunningham and Carson Denison and Florian Dietz and Satvik Golechha and Akbir Khan and Jan Kirchner and Jan Leike and Austin Meek and Kei Nishimura-Gasparian and Euan Ong and Christopher Olah and Adam Pearce and Fabien Roger and Jeanne Salle and Andy Shih and Meg Tong and Drake Thomas and Kelley Rivoire and Adam Jermyn and Monte MacDiarmid and Tom Henighan and Evan Hubinger},
journal= {arXiv preprint arXiv:2503.10965},
year = {2025}
}