LEARNING
Efficient reinforcement learning with relocatable action models
Bethany R. Leffler, Michael L. Littman, Timothy Edmunds
- Year
- 2007
- Citations
- 64
Abstract
Realistic domains for learning possess regularities that make it possible to generalize experience across related states. This paper explores an environment-modeling framework that rep-resents transitions as state-independent outcomes that are common to all states that share the same type. We analyze a set of novel learning problems that arise in this framework, providing lower and upper bounds. We single out one partic-ular variant of practical interest and provide an efficient algo-rithm and experimental results in both simulated and robotic environments.
Keywords
Reinforcement learningComputer scienceSet (abstract data type)Artificial intelligenceAction (physics)State (computer science)Machine learningAlgorithm
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