Online Transfer Learning in Reinforcement Learning Domains
Artificial Intelligence
2015-07-16 v2 Machine Learning
Abstract
This paper proposes an online transfer framework to capture the interaction among agents and shows that current transfer learning in reinforcement learning is a special case of online transfer. Furthermore, this paper re-characterizes existing agents-teaching-agents methods as online transfer and analyze one such teaching method in three ways. First, the convergence of Q-learning and Sarsa with tabular representation with a finite budget is proven. Second, the convergence of Q-learning and Sarsa with linear function approximation is established. Third, the we show the asymptotic performance cannot be hurt through teaching. Additionally, all theoretical results are empirically validated.
Cite
@article{arxiv.1507.00436,
title = {Online Transfer Learning in Reinforcement Learning Domains},
author = {Yusen Zhan and Matthew E. Taylor},
journal= {arXiv preprint arXiv:1507.00436},
year = {2015}
}
Comments
18 pages, 2 figures