AI RESEARCH

Graph-Enhanced Policy Optimization in LLM Agent Training

arXiv CS.AI

ArXi:2510.26270v2 Announce Type: replace Multi-step LLM agents in interactive environments represent a crucial step toward long-horizon decision-making. To train such agents, group-based reinforcement learning is widely adopted, which reinforces trajectories with higher relative performance within the group. However, in most existing methods, every step within a trajectory and every trajectory with the same terminal reward receive identical credit, regardless of their actual contributions.