AI RESEARCH
RGMem: Renormalization Group-inspired Memory Evolution for Language Agents
arXiv CS.AI
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ArXi:2510.16392v3 Announce Type: replace Personalized and continuous interactions are critical for LLM-based conversational agents, yet finite context windows and static parametric memory hinder the modeling of long-term, cross-session user states. Existing approaches, including retrieval-augmented generation and explicit memory systems, primarily operate at the fact level, making it difficult to distill stable preferences and deep user traits from evolving and potentially conflicting dialogues.