Using Localization and Factorization to Reduce the Complexity of Reinforcement Learning

Author:

Sunehag Peter,Hutter Marcus

Publisher

Springer International Publishing

Reference14 articles.

1. Diuk, C., Li, L., Leffer, B.R.: The adaptive k-meteorologists problem and its application to structure learning and feature selection in reinforcement learning. In: Danyluk, A.P., Bottou, L., Littman, M.L. (eds.) ICML. ACM International Conference Proceeding Series, vol. 382 (2009)

2. Hutter, M.: Universal Articial Intelligence: Sequential Decisions based on Algorithmic Probability. Springer, Berlin (2005)

3. Lattimore, T.: Theory of General Reinforcement Learning. Ph.D. thesis, Australian National University (2014)

4. Lecture Notes in Computer Science;T Lattimore,2012

5. Lattimore, T., Hutter, M., Sunehag, P.: The sample-complexity of general reinforcement learning. Journal of Machine Learning Research, W&CP: ICML 28(3), 28–36 (2013)

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