cs.AI updates on arXiv.org 08月22日
Coarse-to-Fine Grounded Memory for LLM Agent Planning
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本文提出了一种基于LLM的粗细粒度记忆框架,通过将环境信息细化为粗粒度焦点和细粒度关键信息,指导训练和推理过程中的经验收集与规划,实现灵活适应多种场景。

arXiv:2508.15305v1 Announce Type: new Abstract: Recent advancements in Large Language Models (LLMs) have driven growing interest in LLM-based agents for complex planning tasks. To avoid costly agent training, many studies adopted memory mechanism that enhances LLM with offline experiences or online trajectory analysis. However, existing works focus on single-granularity memory derived from dynamic environmental interactions, which are inherently constrained by the quality of the collected experiences. This limitation, in turn, constrain the diversity of knowledge and the flexibility of planning. We propose Coarse-to-Fine Grounded Memory (\Ours{}), a novel framework that grounds coarse-to-fine memories with LLM, thereby fully leverage them for flexible adaptation to diverse scenarios. \Ours{} grounds environmental information into coarse-grained focus points to guide experience collection in training tasks, followed by grounding of actionable hybrid-grained tips from each experience. At inference, \Ours{} retrieves task-relevant experiences and tips to support planning. When facing environmental anomalies, the LLM grounds the current situation into fine-grained key information, enabling flexible self-QA reflection and plan correction.

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LLM 记忆机制 复杂任务规划
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