AI Agents 相关度: 9/10

Guideline-Grounded Evidence Accumulation for High-Stakes Agent Verification

Yichi Zhang, Nabeel Seedat, Yinpeng Dong, Peng Cui, Jun Zhu, Mihaela van de Schaar
arXiv: 2603.02798v1 发布: 2026-03-03 更新: 2026-03-03

AI 摘要

GLEAN框架通过专家指南积累证据,提升高风险场景下LLM智能体的决策验证可靠性。

主要贡献

  • 提出GLEAN框架,用于智能体决策验证
  • 引入基于指南的证据积累,提升验证的准确性和校准性
  • 通过主动验证策略,选择性收集额外证据

方法论

GLEAN框架将专家指南编译为校准后的正确性信号,评估智能体步骤与指南的对齐程度,并使用贝叶斯逻辑回归进行校准和主动验证。

原文摘要

As LLM-powered agents have been used for high-stakes decision-making, such as clinical diagnosis, it becomes critical to develop reliable verification of their decisions to facilitate trustworthy deployment. Yet, existing verifiers usually underperform owing to a lack of domain knowledge and limited calibration. To address this, we establish GLEAN, an agent verification framework with Guideline-grounded Evidence Accumulation that compiles expert-curated protocols into trajectory-informed, well-calibrated correctness signals. GLEAN evaluates the step-wise alignment with domain guidelines and aggregates multi-guideline ratings into surrogate features, which are accumulated along the trajectory and calibrated into correctness probabilities using Bayesian logistic regression. Moreover, the estimated uncertainty triggers active verification, which selectively collects additional evidence for uncertain cases via expanding guideline coverage and performing differential checks. We empirically validate GLEAN with agentic clinical diagnosis across three diseases from the MIMIC-IV dataset, surpassing the best baseline by 12% in AUROC and 50% in Brier score reduction, which confirms the effectiveness in both discrimination and calibration. In addition, the expert study with clinicians recognizes GLEAN's utility in practice.

标签

AI Agents Verification Clinical Diagnosis Evidence Accumulation

arXiv 分类

cs.AI cs.CL