EXG:基于经验图谱的自我进化智能体 / EXG: Self-Evolving Agents with Experience Graphs
1️⃣ 一句话总结
本文提出EXG框架,通过将智能体在运行中积累的成功与失败经验组织成结构化的经验图谱,使其能实时复用和离线整合历史经验,从而显著提升代码生成和推理任务的性能与效率,实现智能体能力的持续自我进化。
Large language model (LLM)-based agents have demonstrated strong capabilities in complex reasoning and problem solving through multi-step interactions, yet most deployed agents remain behaviorally static, with knowledge acquired during execution rarely translating into systematic improvement over time. In response, a growing line of work on self-evolving agents explores how agents can improve through experience during deployment, but most existing approaches either rely on ad hoc reflection limited to single-task correction or adopt unstructured memory that accumulates fragmented experience with delayed usability. To address this limitation, we introduce EXG, an experience graph framework for self-evolving agents that explicitly organizes accumulated successes and failures into a structured, relational representation. EXG is the first experience graph designed for self-evolving agents, supporting both online, real-time graph growth during execution for immediate cross-task experience reuse, and offline reuse of a consolidated experience graph as an external memory module. This design also enables EXG to serve as a plug-and-play component for existing self-evolving agents, organizing prior experience into a unified experience graph and improving both solution quality and resource efficiency as deployment progresses. Extensive experiments across code generation and reasoning benchmarks show that EXG attains more favorable performance-efficiency trade-offs than reflection- and memory-based baselines in both online and offline evaluations. Our results suggest that structuring experience as a graph provides a principled foundation for scalable and transferable self-evolving agent behavior.
EXG:基于经验图谱的自我进化智能体 / EXG: Self-Evolving Agents with Experience Graphs
本文提出EXG框架,通过将智能体在运行中积累的成功与失败经验组织成结构化的经验图谱,使其能实时复用和离线整合历史经验,从而显著提升代码生成和推理任务的性能与效率,实现智能体能力的持续自我进化。
源自 arXiv: 2605.17721