AsyncQVI: Asynchronous-Parallel Q-Value Iteration for Discounted Markov Decision Processes with Near-Optimal Sample Complexity
Abstract
In this paper, we propose AsyncQVI, an asynchronous-parallel Q-value iteration for discounted Markov decision processes whose transition and reward can only be sampled through a generative model. Given such a problem with states, actions, and a discounted factor , AsyncQVI uses memory of size and returns an -optimal policy with probability at least using samples. AsyncQVI is also the first asynchronous-parallel algorithm for discounted Markov decision processes that has a sample complexity, which nearly matches the theoretical lower bound. The relatively low memory footprint and parallel ability make AsyncQVI suitable for large-scale applications. In numerical tests, we compare AsyncQVI with four sample-based value iteration methods. The results show that our algorithm is highly efficient and achieves linear parallel speedup.
Keywords
Cite
@article{arxiv.1812.00885,
title = {AsyncQVI: Asynchronous-Parallel Q-Value Iteration for Discounted Markov Decision Processes with Near-Optimal Sample Complexity},
author = {Yibo Zeng and Fei Feng and Wotao Yin},
journal= {arXiv preprint arXiv:1812.00885},
year = {2020}
}
Comments
Accepted by AISTATS 2020