Robust $Q$-learning Algorithm for Markov Decision Processes under Wasserstein Uncertainty
Machine Learning
2024-06-21 v3 Artificial Intelligence
Optimization and Control
Probability
Machine Learning
Abstract
We present a novel -learning algorithm tailored to solve distributionally robust Markov decision problems where the corresponding ambiguity set of transition probabilities for the underlying Markov decision process is a Wasserstein ball around a (possibly estimated) reference measure. We prove convergence of the presented algorithm and provide several examples also using real data to illustrate both the tractability of our algorithm as well as the benefits of considering distributional robustness when solving stochastic optimal control problems, in particular when the estimated distributions turn out to be misspecified in practice.
Cite
@article{arxiv.2210.00898,
title = {Robust $Q$-learning Algorithm for Markov Decision Processes under Wasserstein Uncertainty},
author = {Ariel Neufeld and Julian Sester},
journal= {arXiv preprint arXiv:2210.00898},
year = {2024}
}