AI RESEARCH
Dynamic Mixture of Latent Memories for Self-Evolving Agents
arXiv CS.LG
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ArXi:2605.21951v1 Announce Type: new Achieving self-evolution in intelligent agents requires the continual accumulation of new knowledge across changing task sequences without forgetting previously acquired abilities. Existing approaches either internalize knowledge by updating model parameters, which induces catastrophic forgetting, or rely on external memory, which fails to genuinely enhance the model's intrinsic capabilities. We propose MoLEM, a generative mixture of latent memory framework based on a dynamic mixture-of-experts (MoE.