AI RESEARCH
R^2-Mem: Reflective Experience for Memory Search
arXiv CS.CL
•
ArXi:2605.13486v1 Announce Type: new Deep search has recently emerged as a promising paradigm for enabling agents to retrieve fine-grained historical information without heavy memory pre-managed. However, existing deep search agents for memory system repeat past error behaviors because they fail to learn from the prior high- and low-quality search trajectories. To address this limitation, we propose R^2-Mem, a reflective experience framework for memory search systems.