Graph-based Agent Memory: Taxonomy, Techniques, and Applications
Chang Yang, Chuang Zhou, Yilin Xiao, Su Dong, Luyao Zhuang, Yujing Zhang, Zhu Wang, Zijin Hong, Zheng Yuan, Zhishang Xiang, Shengyuan Chen, Huachi Zhou, Qinggang Zhang, Ninghao Liu, Jinsong Su, Xinrun Wang, Yi Chang, Xiao Huang

TL;DR
This survey comprehensively reviews graph-based agent memory, covering taxonomy, techniques, applications, and future challenges to enhance long-term reasoning in LLM-based agents.
Contribution
It provides a systematic taxonomy, analyzes key techniques across the memory lifecycle, and summarizes resources and challenges in graph-based agent memory.
Findings
Classifies agent memory into multiple categories including structural and non-structural.
Analyzes techniques for memory extraction, storage, retrieval, and evolution.
Summarizes open-source tools, benchmarks, and application scenarios.
Abstract
Memory emerges as the core module in the Large Language Model (LLM)-based agents for long-horizon complex tasks (e.g., multi-turn dialogue, game playing, scientific discovery), where memory can enable knowledge accumulation, iterative reasoning and self-evolution. Among diverse paradigms, graph stands out as a powerful structure for agent memory due to the intrinsic capabilities to model relational dependencies, organize hierarchical information, and support efficient retrieval. This survey presents a comprehensive review of agent memory from the graph-based perspective. First, we introduce a taxonomy of agent memory, including short-term vs. long-term memory, knowledge vs. experience memory, non-structural vs. structural memory, with an implementation view of graph-based memory. Second, according to the life cycle of agent memory, we systematically analyze the key techniques in…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Graph Theory and Algorithms · Multimodal Machine Learning Applications
