AI RESEARCH
Adversarial Latent-State Training for Robust Policies in Partially Observable Domains
arXiv CS.LG
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ArXi:2603.07313v1 Announce Type: new Robustness under latent distribution shift remains challenging in partially observable reinforcement learning. We formalize a focused setting where an adversary selects a hidden initial latent distribution before the episode, termed an adversarial latent-initial-state POMDP. Theoretically, we prove a latent minimax principle, characterize worst-case defender distributions, and derive approximate best-response certificates with finite-sample guarantees, providing formal meaning to empirical.