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Main Authors: Martinez-Lopez, Fernando, Li, Tao, Lu, Yingdong, Chen, Juntao
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.06659
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author Martinez-Lopez, Fernando
Li, Tao
Lu, Yingdong
Chen, Juntao
author_facet Martinez-Lopez, Fernando
Li, Tao
Lu, Yingdong
Chen, Juntao
contents Reinforcement learning (RL) agents often struggle to generalize to new tasks and contexts without updating their parameters, mainly because their learned representations and policies are overfit to the specifics of their training environments. To boost agents' in-context RL (ICRL) ability, this work formulates ICRL as a two-agent emergent communication problem and introduces CORAL (Communicative Representation for Adaptive RL), a framework that learns a transferable communicative context by decoupling latent representation learning from control. In CORAL, an Information Agent (IA) is pre-trained as a world model on a diverse distribution of tasks. Its objective is not to maximize task reward, but to build a world model and distill its understanding into concise messages. The emergent communication protocol is shaped by a novel Causal Influence Loss, which measures the effect that the message has on the next action. During deployment, the previously trained IA serves as a fixed contextualizer for a new Control Agent (CA), which learns to solve tasks by interpreting the provided communicative context. Our experiments demonstrate that this approach enables the CA to achieve significant gains in sample efficiency and successfully perform zero-shot adaptation with the help of pre-trained IA in entirely unseen sparse-reward environments, validating the efficacy of learning a transferable communicative representation.
format Preprint
id arxiv_https___arxiv_org_abs_2508_06659
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle In-Context Reinforcement Learning via Communicative World Models
Martinez-Lopez, Fernando
Li, Tao
Lu, Yingdong
Chen, Juntao
Machine Learning
Artificial Intelligence
Reinforcement learning (RL) agents often struggle to generalize to new tasks and contexts without updating their parameters, mainly because their learned representations and policies are overfit to the specifics of their training environments. To boost agents' in-context RL (ICRL) ability, this work formulates ICRL as a two-agent emergent communication problem and introduces CORAL (Communicative Representation for Adaptive RL), a framework that learns a transferable communicative context by decoupling latent representation learning from control. In CORAL, an Information Agent (IA) is pre-trained as a world model on a diverse distribution of tasks. Its objective is not to maximize task reward, but to build a world model and distill its understanding into concise messages. The emergent communication protocol is shaped by a novel Causal Influence Loss, which measures the effect that the message has on the next action. During deployment, the previously trained IA serves as a fixed contextualizer for a new Control Agent (CA), which learns to solve tasks by interpreting the provided communicative context. Our experiments demonstrate that this approach enables the CA to achieve significant gains in sample efficiency and successfully perform zero-shot adaptation with the help of pre-trained IA in entirely unseen sparse-reward environments, validating the efficacy of learning a transferable communicative representation.
title In-Context Reinforcement Learning via Communicative World Models
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2508.06659