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Autori principali: Bush, Thomas, Chung, Stephen, Anwar, Usman, Garriga-Alonso, Adrià, Krueger, David
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2504.01871
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author Bush, Thomas
Chung, Stephen
Anwar, Usman
Garriga-Alonso, Adrià
Krueger, David
author_facet Bush, Thomas
Chung, Stephen
Anwar, Usman
Garriga-Alonso, Adrià
Krueger, David
contents We present the first mechanistic evidence that model-free reinforcement learning agents can learn to plan. This is achieved by applying a methodology based on concept-based interpretability to a model-free agent in Sokoban -- a commonly used benchmark for studying planning. Specifically, we demonstrate that DRC, a generic model-free agent introduced by Guez et al. (2019), uses learned concept representations to internally formulate plans that both predict the long-term effects of actions on the environment and influence action selection. Our methodology involves: (1) probing for planning-relevant concepts, (2) investigating plan formation within the agent's representations, and (3) verifying that discovered plans (in the agent's representations) have a causal effect on the agent's behavior through interventions. We also show that the emergence of these plans coincides with the emergence of a planning-like property: the ability to benefit from additional test-time compute. Finally, we perform a qualitative analysis of the planning algorithm learned by the agent and discover a strong resemblance to parallelized bidirectional search. Our findings advance understanding of the internal mechanisms underlying planning behavior in agents, which is important given the recent trend of emergent planning and reasoning capabilities in LLMs through RL
format Preprint
id arxiv_https___arxiv_org_abs_2504_01871
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Interpreting Emergent Planning in Model-Free Reinforcement Learning
Bush, Thomas
Chung, Stephen
Anwar, Usman
Garriga-Alonso, Adrià
Krueger, David
Machine Learning
Artificial Intelligence
We present the first mechanistic evidence that model-free reinforcement learning agents can learn to plan. This is achieved by applying a methodology based on concept-based interpretability to a model-free agent in Sokoban -- a commonly used benchmark for studying planning. Specifically, we demonstrate that DRC, a generic model-free agent introduced by Guez et al. (2019), uses learned concept representations to internally formulate plans that both predict the long-term effects of actions on the environment and influence action selection. Our methodology involves: (1) probing for planning-relevant concepts, (2) investigating plan formation within the agent's representations, and (3) verifying that discovered plans (in the agent's representations) have a causal effect on the agent's behavior through interventions. We also show that the emergence of these plans coincides with the emergence of a planning-like property: the ability to benefit from additional test-time compute. Finally, we perform a qualitative analysis of the planning algorithm learned by the agent and discover a strong resemblance to parallelized bidirectional search. Our findings advance understanding of the internal mechanisms underlying planning behavior in agents, which is important given the recent trend of emergent planning and reasoning capabilities in LLMs through RL
title Interpreting Emergent Planning in Model-Free Reinforcement Learning
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2504.01871