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Main Authors: Xia, Siyu, Xu, Zekun, Chai, Jiajun, Fan, Wentian, Song, Yan, Wang, Xiaohan, Yin, Guojun, Lin, Wei, Zhang, Haifeng, Wang, Jun
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.07800
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author Xia, Siyu
Xu, Zekun
Chai, Jiajun
Fan, Wentian
Song, Yan
Wang, Xiaohan
Yin, Guojun
Lin, Wei
Zhang, Haifeng
Wang, Jun
author_facet Xia, Siyu
Xu, Zekun
Chai, Jiajun
Fan, Wentian
Song, Yan
Wang, Xiaohan
Yin, Guojun
Lin, Wei
Zhang, Haifeng
Wang, Jun
contents Large Language Models (LLMs) based agents have demonstrated remarkable potential in autonomous task-solving across complex, open-ended environments. A promising approach for improving the reasoning capabilities of LLM agents is to better utilize prior experiences in guiding current decisions. However, LLMs acquire experience either through implicit memory via training, which suffers from catastrophic forgetting and limited interpretability, or explicit memory via prompting, which lacks adaptability. In this paper, we introduce a novel agent-centric, trainable, multi-layered graph memory framework and evaluate how context memory enhances the ability of LLMs to utilize parametric information. The graph abstracts raw agent trajectories into structured decision paths in a state machine and further distills them into high-level, human-interpretable strategic meta-cognition. In order to make memory adaptable, we propose a reinforcement-based weight optimization procedure that estimates the empirical utility of each meta-cognition based on reward feedback from downstream tasks. These optimized strategies are then dynamically integrated into the LLM agent's training loop through meta-cognitive prompting. Empirically, the learnable graph memory delivers robust generalization, improves LLM agents' strategic reasoning performance, and provides consistent benefits during Reinforcement Learning (RL) training.
format Preprint
id arxiv_https___arxiv_org_abs_2511_07800
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle From Experience to Strategy: Empowering LLM Agents with Trainable Graph Memory
Xia, Siyu
Xu, Zekun
Chai, Jiajun
Fan, Wentian
Song, Yan
Wang, Xiaohan
Yin, Guojun
Lin, Wei
Zhang, Haifeng
Wang, Jun
Computation and Language
Large Language Models (LLMs) based agents have demonstrated remarkable potential in autonomous task-solving across complex, open-ended environments. A promising approach for improving the reasoning capabilities of LLM agents is to better utilize prior experiences in guiding current decisions. However, LLMs acquire experience either through implicit memory via training, which suffers from catastrophic forgetting and limited interpretability, or explicit memory via prompting, which lacks adaptability. In this paper, we introduce a novel agent-centric, trainable, multi-layered graph memory framework and evaluate how context memory enhances the ability of LLMs to utilize parametric information. The graph abstracts raw agent trajectories into structured decision paths in a state machine and further distills them into high-level, human-interpretable strategic meta-cognition. In order to make memory adaptable, we propose a reinforcement-based weight optimization procedure that estimates the empirical utility of each meta-cognition based on reward feedback from downstream tasks. These optimized strategies are then dynamically integrated into the LLM agent's training loop through meta-cognitive prompting. Empirically, the learnable graph memory delivers robust generalization, improves LLM agents' strategic reasoning performance, and provides consistent benefits during Reinforcement Learning (RL) training.
title From Experience to Strategy: Empowering LLM Agents with Trainable Graph Memory
topic Computation and Language
url https://arxiv.org/abs/2511.07800