Feature Selection Using Regularization in Approximate Linear Programs for Markov Decision Processes

Marek Petrik, Gavin Taylor, Ron Parr, and Shlomo Zilberstein. Feature Selection Using Regularization in Approximate Linear Programs for Markov Decision Processes. Proceedings of the Twenty-Seventh International Conference on Machine Learning (ICML), Haifa, Israel, 2010.

Abstract

Approximate dynamic programming has been used successfully in a large variety of domains, but it relies on a small set of provided approximation features to calculate solutions reliably. Large and rich sets of features can cause existing algorithms to overfit because of a limited number of samples. We address this shortcoming using L1 regularization in approximate linear programming. Because the proposed method can automatically select the appropriate richness of features, its performance does not degrade with an increasing number of features. These results rely on new and stronger sampling bounds for regularized approximate linear programs. We also propose a computationally efficient homotopy method. The empirical evaluation of the approach shows that the proposed method performs well on simple MDPs and standard benchmark problems.

Bibtex entry:

@inproceedings{PTPZicml10,
  author	= {Marek Petrik, Gavin Taylor, Ron Parr, and Shlomo Zilberstein},
  title		= {Feature Selection Using Regularization in Approximate Linear
                   Programs for {M}arkov Decision Processes},
  booktitle     = {Proceedings of the Twenty-Seventh International Conference on
                   Machine Learning},
  year		= {2010},
  pages		= {},
  address       = {Haifa, Israel},
  url		= {http://rbr.cs.umass.edu/shlomo/papers/PTPZicml10.html}
}

shlomo@cs.umass.edu
UMass Amherst