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Machine Learning, Volume 22, 1996
Volume 22, Numbers 1-3, January 1996
- Thomas G. Dietterich:

Editorial. 5-6 - Leslie Pack Kaelbling:

Introduction. 7-9 - David E. Moriarty, Risto Miikkulainen:

Efficient Reinforcement Learning through Symbiotic Evolution. 11-32 - Steven J. Bradtke, Andrew G. Barto:

Linear Least-Squares Algorithms for Temporal Difference Learning. 33-57 - John N. Tsitsiklis, Benjamin Van Roy:

Feature-Based Methods for Large Scale Dynamic Programming. 59-94 - Robert E. Schapire, Manfred K. Warmuth:

On the Worst-Case Analysis of Temporal-Difference Learning Algorithms. 95-121 - Satinder P. Singh, Richard S. Sutton:

Reinforcement Learning with Replacing Eligibility Traces. 123-158 - Sridhar Mahadevan:

Average Reward Reinforcement Learning: Foundations, Algorithms, and Empirical Results. 159-195 - Matthias Heger:

The Loss from Imperfect Value Functions in Expectation-Based and Minimax-Based Tasks. 197-225 - Sven Koenig, Reid G. Simmons:

The Effect of Representation and Knowledge on Goal-Directed Exploration with Reinforcement-Learning Algorithms. 227-250 - Richard Maclin, Jude W. Shavlik:

Creating Advice-Taking Reinforcement Learners. 251-281 - Jing Peng, Ronald J. Williams:

Incremental Multi-Step Q-Learning. 283-290

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