Litcius/Paper detail

Almost optimal model-free reinforcement learning via reference-advantage decomposition

Zihan Zhang, Yuan Zhou, Xiangyang Ji

2020Neural Information Processing Systems12 citations

Abstract

We study the reinforcement learning problem in the setting of finite-horizon episodic Markov Decision Processes (MDPs) with $S$ states, $A$ actions, and episode length $H$. We propose a model-free algorithm UCB-Advantage and prove that it achieves $\tilde{O}(\sqrt{H^2SAT})$ regret where $T = KH$ and $K$ is the number of episodes to play. Our regret bound improves upon the results of [Jin et al., 2018] and matches the best known model-based algorithms as well as the information theoretic lower bound up to logarithmic factors. We also show that UCB-Advantage achieves low local switching cost and applies to concurrent reinforcement learning, improving upon the recent results of [Bai et al., 2019].

Topics & Concepts

RegretReinforcement learningMarkov decision processLogarithmUpper and lower boundsDecompositionComputer scienceMarkov chainTildeQ-learningMathematical optimizationMathematicsMarkov processCombinatoricsAlgorithmArtificial intelligenceMachine learningStatisticsEcologyMathematical analysisBiologyReinforcement Learning in RoboticsAge of Information OptimizationAdvanced Bandit Algorithms Research
Almost optimal model-free reinforcement learning via reference-advantage decomposition | Litcius