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Empirical evaluation methods for multiobjective reinforcement learning algorithms

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journal contribution
posted on 2011-07-01, 00:00 authored by P Vamplew, Richard DazeleyRichard Dazeley, A Berry, R Issabekov, E Dekker
While a number of algorithms for multiobjective reinforcement learning have been proposed, and a small number of applications developed, there has been very little rigorous empirical evaluation of the performance and limitations of these algorithms. This paper proposes standard methods for such empirical evaluation, to act as a foundation for future comparative studies. Two classes of multiobjective reinforcement learning algorithms are identified, and appropriate evaluation metrics and methodologies are proposed for each class. A suite of benchmark problems with known Pareto fronts is described, and future extensions and implementations of this benchmark suite are discussed. The utility of the proposed evaluation methods are demonstrated via an empirical comparison of two example learning algorithms.

History

Journal

Machine learning

Volume

84

Issue

1-2

Pagination

51 - 80

Publisher

Springer

Location

New York, N.Y.

ISSN

0885-6125

eISSN

1573-0565

Language

eng

Publication classification

C Journal article; C1.1 Refereed article in a scholarly journal

Copyright notice

2010, The Author(s)