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Ron Parr

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Flexible Decomposition Algorithms for Weakly Coupled Markov Decision Problems

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Jan 30, 2013
Ron Parr

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Policy Iteration for Factored MDPs

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Jan 16, 2013
Daphne Koller, Ron Parr

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Inference in Hybrid Networks: Theoretical Limits and Practical Algorithms

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Jan 10, 2013
Uri Lerner, Ron Parr

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Value Function Approximation in Zero-Sum Markov Games

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Dec 12, 2012
Michail Lagoudakis, Ron Parr

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Value Function Approximation in Noisy Environments Using Locally Smoothed Regularized Approximate Linear Programs

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Oct 16, 2012
Gavin Taylor, Ron Parr

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Efficient Selection of Disambiguating Actions for Stereo Vision

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Jun 27, 2012
Monika Schaeffer, Ron Parr

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

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May 20, 2010
Marek Petrik, Gavin Taylor, Ron Parr, Shlomo Zilberstein

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