AI RESEARCH

Joint Agent Memory and Exploration Learning via Novelty Signals

arXiv CS.AI

ArXi:2606.01528v1 Announce Type: new In open-ended environments, exploration is fundamental for autonomous agents, yet current language model agents struggle with this. Effective exploration requires memory, but retaining raw interaction histories is computationally expensive over long trajectories. While latent memory offers a solution to compress interaction histories, its