DocumentCode
1209064
Title
Ensemble Algorithms in Reinforcement Learning
Author
Wiering, Marco A. ; Van Hasselt, Hado
Author_Institution
Dept. of Artificial Intell., Univ. of Groningen, Groningen
Volume
38
Issue
4
fYear
2008
Firstpage
930
Lastpage
936
Abstract
This paper describes several ensemble methods that combine multiple different reinforcement learning (RL) algorithms in a single agent. The aim is to enhance learning speed and final performance by combining the chosen actions or action probabilities of different RL algorithms. We designed and implemented four different ensemble methods combining the following five different RL algorithms: Q-learning, Sarsa, actor-critic (AC), QV-learning, and AC learning automaton. The intuitively designed ensemble methods, namely, majority voting (MV), rank voting, Boltzmann multiplication (BM), and Boltzmann addition, combine the policies derived from the value functions of the different RL algorithms, in contrast to previous work where ensemble methods have been used in RL for representing and learning a single value function. We show experiments on five maze problems of varying complexity; the first problem is simple, but the other four maze tasks are of a dynamic or partially observable nature. The results indicate that the BM and MV ensembles significantly outperform the single RL algorithms.
Keywords
learning (artificial intelligence); probability; AC learning automaton; Boltzmann addition; Boltzmann multiplication; Q-learning; QV-learning; Sarsa learning; action probability; actor-critic learning; ensemble algorithm; learning speed; majority voting; rank voting; reinforcement learning; Dynamic mazes; ensemble algorithms; partially observable environments; reinforcement learning (RL); Algorithms; Computer Simulation; Feedback; Models, Theoretical; Neural Networks (Computer); Programming, Linear; Reinforcement (Psychology); Systems Theory;
fLanguage
English
Journal_Title
Systems, Man, and Cybernetics, Part B: Cybernetics, IEEE Transactions on
Publisher
ieee
ISSN
1083-4419
Type
jour
DOI
10.1109/TSMCB.2008.920231
Filename
4509588
Link To Document