Decision Theory-Guided Deep Reinforcement Learning for Fast Learning
Abstract
This paper introduces a novel approach, Decision Theory-guided Deep Reinforcement Learning (DT-guided DRL), to address the inherent cold start problem in DRL. By integrating decision theory principles, DT-guided DRL enhances agents' initial performance and robustness in complex environments, enabling more efficient and reliable convergence during learning. Our investigation encompasses two primary problem contexts: the cart pole and maze navigation challenges. Experimental results demonstrate that the integration of decision theory not only facilitates effective initial guidance for DRL agents but also promotes a more structured and informed exploration strategy, particularly in environments characterized by large and intricate state spaces. The results of experiment demonstrate that DT-guided DRL can provide significantly higher rewards compared to regular DRL. Specifically, during the initial phase of training, the DT-guided DRL yields up to an 184% increase in accumulated reward. Moreover, even after reaching convergence, it maintains a superior performance, ending with up to 53% more reward than standard DRL in large maze problems. DT-guided DRL represents an advancement in mitigating a fundamental challenge of DRL by leveraging functions informed by human (designer) knowledge, setting a foundation for further research in this promising interdisciplinary domain.
Keywords
Cite
@article{arxiv.2402.06023,
title = {Decision Theory-Guided Deep Reinforcement Learning for Fast Learning},
author = {Zelin Wan and Jin-Hee Cho and Mu Zhu and Ahmed H. Anwar and Charles Kamhoua and Munindar P. Singh},
journal= {arXiv preprint arXiv:2402.06023},
year = {2024}
}