AI RESEARCH
Fast Rates for Inverse Reinforcement Learning
arXiv CS.LG
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ArXi:2605.14599v1 Announce Type: new We establish novel structural and statistical results for entropy-regularized min-max inverse reinforcement learning (Min-Max-IRL) with linear reward classes in finite-horizon MDPs with Borel state and action spaces. On the structural side, we show that maximum likelihood estimation (MLE) and Min-Max-IRL are equivalent at the population level, and at the empirical level under deterministic dynamics.