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Main Authors: Ge, Rui, Fu, Yichao, Qian, Yuyang, Su, Junda, Zhao, Yiming, Zhao, Peng, Zhang, Hao
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.16843
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author Ge, Rui
Fu, Yichao
Qian, Yuyang
Su, Junda
Zhao, Yiming
Zhao, Peng
Zhang, Hao
author_facet Ge, Rui
Fu, Yichao
Qian, Yuyang
Su, Junda
Zhao, Yiming
Zhao, Peng
Zhang, Hao
contents Large language models are increasingly deployed as autonomous agents that must plan, act, and recover from mistakes through long-horizon interaction with environments that provide rich feedback. However, prevailing outcome-driven post-training methods (e.g., RL with verifiable rewards) primarily optimize final success signals, leaving rich environment feedback underutilized. Consequently, they often lead to distribution sharpening: the policy becomes better at reproducing a narrow set of already-successful behaviors, while failing to improve the feedback-grounded agency needed to expand problem-solving capacity (e.g., Pass@k) in long-horizon settings. To address this, we propose LEAFE (Learning Feedback-Grounded Agency from Reflective Experience), a framework that internalizes recovery agency from reflective experience. Specifically, during exploration, the agent summarizes environment feedback into actionable experience, backtracks to earlier decision points, and explores alternative branches with revised actions. We then distill these experience-guided corrections into the model through supervised fine-tuning, enabling the policy to recover more effectively in future interactions. Across a diverse set of interactive coding and agentic tasks under fixed interaction budgets, LEAFE consistently improves Pass@1 over the base model and achieves higher Pass@k than outcome-driven baselines (GRPO) and experience-based methods such as Early Experience, with gains of up to 14% on Pass@128.
format Preprint
id arxiv_https___arxiv_org_abs_2603_16843
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Internalizing Agency from Reflective Experience
Ge, Rui
Fu, Yichao
Qian, Yuyang
Su, Junda
Zhao, Yiming
Zhao, Peng
Zhang, Hao
Artificial Intelligence
Large language models are increasingly deployed as autonomous agents that must plan, act, and recover from mistakes through long-horizon interaction with environments that provide rich feedback. However, prevailing outcome-driven post-training methods (e.g., RL with verifiable rewards) primarily optimize final success signals, leaving rich environment feedback underutilized. Consequently, they often lead to distribution sharpening: the policy becomes better at reproducing a narrow set of already-successful behaviors, while failing to improve the feedback-grounded agency needed to expand problem-solving capacity (e.g., Pass@k) in long-horizon settings. To address this, we propose LEAFE (Learning Feedback-Grounded Agency from Reflective Experience), a framework that internalizes recovery agency from reflective experience. Specifically, during exploration, the agent summarizes environment feedback into actionable experience, backtracks to earlier decision points, and explores alternative branches with revised actions. We then distill these experience-guided corrections into the model through supervised fine-tuning, enabling the policy to recover more effectively in future interactions. Across a diverse set of interactive coding and agentic tasks under fixed interaction budgets, LEAFE consistently improves Pass@1 over the base model and achieves higher Pass@k than outcome-driven baselines (GRPO) and experience-based methods such as Early Experience, with gains of up to 14% on Pass@128.
title Internalizing Agency from Reflective Experience
topic Artificial Intelligence
url https://arxiv.org/abs/2603.16843