Saved in:
Bibliographic Details
Main Authors: McKee-Reid, Leo, Sträter, Christoph, Martinez, Maria Angelica, Needham, Joe, Balesni, Mikita
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.06491
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913538772041728
author McKee-Reid, Leo
Sträter, Christoph
Martinez, Maria Angelica
Needham, Joe
Balesni, Mikita
author_facet McKee-Reid, Leo
Sträter, Christoph
Martinez, Maria Angelica
Needham, Joe
Balesni, Mikita
contents Previous work has shown that training "helpful-only" LLMs with reinforcement learning on a curriculum of gameable environments can lead models to generalize to egregious specification gaming, such as editing their own reward function or modifying task checklists to appear more successful. We show that gpt-4o, gpt-4o-mini, o1-preview, and o1-mini - frontier models trained to be helpful, harmless, and honest - can engage in specification gaming without training on a curriculum of tasks, purely from in-context iterative reflection (which we call in-context reinforcement learning, "ICRL"). We also show that using ICRL to generate highly-rewarded outputs for expert iteration (compared to the standard expert iteration reinforcement learning algorithm) may increase gpt-4o-mini's propensity to learn specification-gaming policies, generalizing (in very rare cases) to the most egregious strategy where gpt-4o-mini edits its own reward function. Our results point toward the strong ability of in-context reflection to discover rare specification-gaming strategies that models might not exhibit zero-shot or with normal training, highlighting the need for caution when relying on alignment of LLMs in zero-shot settings.
format Preprint
id arxiv_https___arxiv_org_abs_2410_06491
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Honesty to Subterfuge: In-Context Reinforcement Learning Can Make Honest Models Reward Hack
McKee-Reid, Leo
Sträter, Christoph
Martinez, Maria Angelica
Needham, Joe
Balesni, Mikita
Artificial Intelligence
Machine Learning
Previous work has shown that training "helpful-only" LLMs with reinforcement learning on a curriculum of gameable environments can lead models to generalize to egregious specification gaming, such as editing their own reward function or modifying task checklists to appear more successful. We show that gpt-4o, gpt-4o-mini, o1-preview, and o1-mini - frontier models trained to be helpful, harmless, and honest - can engage in specification gaming without training on a curriculum of tasks, purely from in-context iterative reflection (which we call in-context reinforcement learning, "ICRL"). We also show that using ICRL to generate highly-rewarded outputs for expert iteration (compared to the standard expert iteration reinforcement learning algorithm) may increase gpt-4o-mini's propensity to learn specification-gaming policies, generalizing (in very rare cases) to the most egregious strategy where gpt-4o-mini edits its own reward function. Our results point toward the strong ability of in-context reflection to discover rare specification-gaming strategies that models might not exhibit zero-shot or with normal training, highlighting the need for caution when relying on alignment of LLMs in zero-shot settings.
title Honesty to Subterfuge: In-Context Reinforcement Learning Can Make Honest Models Reward Hack
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2410.06491