Relative Q-Learning for Average-Reward Markov Decision Processes With Continuous States

Markov decision processes (MDPs) are widely used for modeling sequential decision-making problems under uncertainty. We propose an online algorithm for solving a class of average-reward MDPs with continuous state spaces in a model-free setting. The algorithm combines the classical relative Q-learnin...

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Veröffentlicht in:IEEE transactions on automatic control 2024-10, Vol.69 (10), p.6546-6560
Hauptverfasser: Yang, Xiangyu, Hu, Jiaqiao, Hu, Jian-Qiang
Format: Artikel
Sprache:eng
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Zusammenfassung:Markov decision processes (MDPs) are widely used for modeling sequential decision-making problems under uncertainty. We propose an online algorithm for solving a class of average-reward MDPs with continuous state spaces in a model-free setting. The algorithm combines the classical relative Q-learning with an asynchronous averaging procedure, which permits the Q-value estimate at a state-action pair to be updated based on observations at other neighboring pairs sampled in subsequent iterations. These point estimates are then retained and used for constructing an interpolation-based function approximator that predicts the Q-function values at unexplored state-action pairs. We show that with probability one the sequence of function approximators converges to the optimal Q-function up to a constant. Numerical results on a simple benchmark example are reported to illustrate the algorithm.
ISSN:0018-9286
1558-2523
DOI:10.1109/TAC.2024.3371380