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Main Authors: He, Zhitao, Liu, Zijun, Li, Peng, Fung, Yi R., Yan, Ming, Zhang, Ji, Huang, Fei, Liu, Yang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.14496
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author He, Zhitao
Liu, Zijun
Li, Peng
Fung, Yi R.
Yan, Ming
Zhang, Ji
Huang, Fei
Liu, Yang
author_facet He, Zhitao
Liu, Zijun
Li, Peng
Fung, Yi R.
Yan, Ming
Zhang, Ji
Huang, Fei
Liu, Yang
contents LLM-based agents have made significant advancements in interactive environments, such as mobile operations and web browsing, and other domains beyond computer using. Current multi-agent systems universally excel in performance, compared to single agents, but struggle with generalization across environments due to predefined roles and inadequate strategies for generalizing language agents. The challenge of achieving both strong performance and good generalization has hindered the progress of multi-agent systems for interactive environments. To address these issues, we propose CollabUIAgents, a multi-agent reinforcement learning framework with a novel multi-agent credit re-assignment (CR) strategy, assigning process rewards with LLMs rather than environment-specific rewards and learning with synthesized preference data, in order to foster generalizable, collaborative behaviors among the role-free agents' policies. Empirical results show that our framework improves both performance and cross-environment generalizability of multi-agent systems. Moreover, our 7B-parameter system achieves results on par with or exceed strong closed-source models, and the LLM that guides the CR. We also provide insights in using granular CR rewards effectively for environment generalization, and accommodating trained LLMs in multi-agent systems.
format Preprint
id arxiv_https___arxiv_org_abs_2502_14496
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Advancing Language Multi-Agent Learning with Credit Re-Assignment for Interactive Environment Generalization
He, Zhitao
Liu, Zijun
Li, Peng
Fung, Yi R.
Yan, Ming
Zhang, Ji
Huang, Fei
Liu, Yang
Computation and Language
LLM-based agents have made significant advancements in interactive environments, such as mobile operations and web browsing, and other domains beyond computer using. Current multi-agent systems universally excel in performance, compared to single agents, but struggle with generalization across environments due to predefined roles and inadequate strategies for generalizing language agents. The challenge of achieving both strong performance and good generalization has hindered the progress of multi-agent systems for interactive environments. To address these issues, we propose CollabUIAgents, a multi-agent reinforcement learning framework with a novel multi-agent credit re-assignment (CR) strategy, assigning process rewards with LLMs rather than environment-specific rewards and learning with synthesized preference data, in order to foster generalizable, collaborative behaviors among the role-free agents' policies. Empirical results show that our framework improves both performance and cross-environment generalizability of multi-agent systems. Moreover, our 7B-parameter system achieves results on par with or exceed strong closed-source models, and the LLM that guides the CR. We also provide insights in using granular CR rewards effectively for environment generalization, and accommodating trained LLMs in multi-agent systems.
title Advancing Language Multi-Agent Learning with Credit Re-Assignment for Interactive Environment Generalization
topic Computation and Language
url https://arxiv.org/abs/2502.14496