Batch-iFDD for representation expansion in large MDPs
Author(s)
Geramifard, Alborz; Walsh, Thomas J.; Roy, Nicholas; How, Jonathan P.
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Matching pursuit (MP) methods are a promising class of feature construction algorithms for value function approximation. Yet existing MP methods require creating a pool of potential features, mandating expert knowledge or enumeration of a large feature pool, both of which hinder scalability. This paper introduces batch incremental feature dependency discovery (Batch-iFDD) as an MP method that inherits a provable convergence property. Additionally, Batch-iFDD does not require a large pool of features, leading to lower computational complexity. Empirical policy evaluation results across three domains with up to one million states highlight the scalability of Batch-iFDD over the previous state of the art MP algorithm.
Date issued
2013-07Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence Laboratory; Massachusetts Institute of Technology. Department of Aeronautics and Astronautics; Massachusetts Institute of Technology. Laboratory for Information and Decision SystemsJournal
Proceedings of the 2013 Conference on Uncertainty in Artificial Intelligence
Publisher
Association for Uncertainty in Artificial Intelligence (AUAI)
Citation
Geramifard, Alborz, Thomas J. Walsh, Nicholas Roy, and Jonathan P. How. "Batch-iFDD for representation expansion in large MDPs." 2013 Conference on Uncertainty in Artificial Intelligence (July 2013).
Version: Author's final manuscript