想改进智能体强化学习的信用分配?TRIAGE通过角色类型化标签给不同动作段不同奖励,效果超过GRPO,还能少绕弯路。
论文提出TRIAGE框架,通过将动作段分类为决断性进展、有用探索、无进展基础设施或回归,并分配固定边界奖励,解决了标准GRPO仅依赖最终结果信号的盲点。在ALFWorld、Search-QA和WebShop三个基准上,TRIAGE基于两种策略模型均提升了成功率。消融实验表明,角色类型化(尤其是检测成功轨迹中的回归行为)是性能提升的主要来源,且TRIAGE在ALFWorld和WebShop上分别比GRPO减少了10.4%和14.8%的环境交互轮次。
TRIAGE: Role-Typed Credit Assignment for Agentic Reinforcement Learning
Agentic reinforcement learning requires assigning credit to environment-facing actions such as searches, clicks, edits, navigation commands, and object interactions. Standard GRPO uses the final verifier outcome as a uniform advantage over all action tokens. This outcome signal is useful but structurally incomplete: it punishes useful exploration in failed rollouts and reinforces redundant or regressive actions in successful rollouts. We propose TRIAGE, a role-typed credit assignment framework that adds a semantic role axis to outcome credit. A structured judge classifies each segment as decisive progress, useful exploration, no-progress infrastructure, or regression, and a fixed role-conditioned rule maps these labels to bounded segment-level process rewards. This keeps verifier outcomes as the source of optimization direction while correcting the two main blind spots of outcome-only credit. We further show that role-conditioned credit is the optimal segment-level correction expressible from role labels alone -- a projection of the per-segment advantage residual onto the role variable -- so that the fixed role constants reduce advantage estimation error whenever the judge is reliable, and we connect this to lower-variance policy gradients. Across ALFWorld, Search-QA, and WebShop, TRIAGE improves success rates over GRPO for two policy models and outperforms both a scalar judge-derived process reward and an outcome-supervised shared-backbone value baseline. Ablations show that the gain comes from role typing rather than merely adding dense rewards: reliable detection of regression inside successful trajectories is the dominant contributor, while exploration credit provides a consistent secondary gain; on completed ALFWorld and WebShop rollouts, TRIAGE also reduces environment-facing turns by an additional $10.4\%$ and $14.8\%$ relative to GRPO.