State-free Reinforcement Learning
Abstract
In this work, we study the state-free RL problem, where the algorithm does not have the states information before interacting with the environment. Specifically, denote the reachable state set by S := \ s|π∈ qP, π(s)>0 \, we design an algorithm which requires no information on the state space S while having a regret that is completely independent of S and only depend on S. We view this as a concrete first step towards parameter-free RL, with the goal of designing RL algorithms that require no hyper-parameter tuning.
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