LGAICLApr 24, 2025

RAGEN: Understanding Self-Evolution in LLM Agents via Multi-Turn Reinforcement Learning

arXiv:2504.20073v2229 citationsh-index: 34Has Code
Originality Incremental advance
AI Analysis

This addresses the problem of long-horizon decision-making in LLM agents for AI researchers, though it appears incremental with a focus on specific training issues.

The paper tackles the challenge of training LLM agents for interactive tasks using multi-turn reinforcement learning, proposing the StarPO framework and RAGEN system, and finds that without reasoning-aware rewards, agents develop shallow strategies or hallucinations.

Training large language models (LLMs) as interactive agents presents unique challenges including long-horizon decision making and interacting with stochastic environment feedback. While reinforcement learning (RL) has enabled progress in static tasks, multi-turn agent RL training remains underexplored. We propose StarPO (State-Thinking-Actions-Reward Policy Optimization), a general framework for trajectory-level agent RL, and introduce RAGEN, a modular system for training and evaluating LLM agents. Our study on four stylized environments reveals three core findings. First, our agent RL training shows a recurring mode of Echo Trap where reward variance cliffs and gradient spikes; we address this with StarPO-S, a stabilized variant with trajectory filtering, critic incorporation, and gradient stabilization. Second, we find the shaping of RL rollouts would benefit from diverse initial states, medium interaction granularity and more frequent sampling. Third, we show that without fine-grained, reasoning-aware reward signals, agent reasoning hardly emerge through multi-turn RL and they may show shallow strategies or hallucinated thoughts. Code and environments are available at https://github.com/RAGEN-AI/RAGEN.

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