LGAIJun 3, 2025

Heterogeneous Group-Based Reinforcement Learning for LLM-based Multi-Agent Systems

arXiv:2506.02718v16 citationsh-index: 10
Originality Highly original
AI Analysis

This work addresses the problem of scalable and stable optimization for LLM-based multi-agent systems, which is incremental as it builds on existing MARL methods by removing Critic networks.

The paper tackles the challenge of optimizing multi-agent systems built from specialized LLM agents by proposing MHGPO, a novel Critic-free reinforcement learning algorithm that eliminates Critic networks to enhance stability and reduce computational overhead, demonstrating consistent outperformance over MAPPO in task performance and efficiency on a multi-agent LLM-based search system.

Large Language Models (LLMs) have achieved remarkable success across diverse natural language processing tasks, yet their deployment in real-world applications is hindered by fixed knowledge cutoffs and difficulties in generating controllable, accurate outputs in a single inference. Multi-agent systems (MAS) built from specialized LLM agents offer a promising solution, enabling dynamic collaboration and iterative reasoning. However, optimizing these systems remains a challenge, as conventional methods such as prompt engineering and supervised fine-tuning entail high engineering overhead and limited adaptability. Reinforcement learning (RL), particularly multi-agent reinforcement learning (MARL), provides a scalable framework by refining agent policies based on system-level feedback. Nevertheless, existing MARL algorithms, such as Multi-Agent Proximal Policy Optimization (MAPPO), rely on Critic networks, which can cause training instability and increase computational burden. To address these limitations and target the prototypical Multi-Agent Search System (MASS), we propose Multi-Agent Heterogeneous Group Policy Optimization (MHGPO), a novel Critic-free algorithm that guides policy updates by estimating relative reward advantages across heterogeneous groups of rollouts. MHGPO eliminates the need for Critic networks, enhancing stability and reducing computational overhead. Additionally, we introduce three group rollout sampling strategies that trade off between efficiency and effectiveness. Experiments on a multi-agent LLM-based search system demonstrate that MHGPO consistently outperforms MAPPO in both task performance and computational efficiency, without requiring warm-up, underscoring its potential for stable and scalable optimization of complex LLM-based MAS.

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