Large language model (LLM)-based agents have shown strong potential in multi-task scenarios, owing to their ability to transfer knowledge across diverse tasks. However, existing approaches often treat prior experiences and knowledge as monolithic units, leading to inefficient and coarse-grained knowledge transfer. In this work, we propose a novel hierarchical memory architecture that enables fine-grained knowledge transfer by decoupling high-level planning memory from low-level execution memory. To construct and refine these hierarchical memories, we introduce Hierarchical Hindsight Reflection (H2R), a mechanism that distills reusable and hierarchical knowledge from past agent-environment interactions. At test time, H2R performs retrievals of high-level and low-level memories separately, allowing LLM-based agents to efficiently access and utilize task-relevant knowledge for new tasks.Experimental results across two benchmarks demonstrate that H2R can improve generalization and decision-making performance, outperforming prior baselines such as Expel.
@article{arxiv.2509.12810,
title = {H$^2$R: Hierarchical Hindsight Reflection for Multi-Task LLM Agents},
author = {Shicheng Ye and Chao Yu and Kaiqiang Ke and Chengdong Xu and Yinqi Wei},
journal= {arXiv preprint arXiv:2509.12810},
year = {2025}
}