An Object-Oriented Approach to Reinforcement Learning in an Action Game
Mohan, Shiwali (University of Michigan, Ann Arbor) | Laird, John E. (University of Michigan )
In this work, we look at the challenge of learning in an action game,Infinite Mario. Learning to play an action game can be divided intotwo distinct but related problems, learning an object-relatedbehavior and selecting a primitive action. We propose a framework that allows for the use of reinforcement learning for both ofthese problems. We present promising results in some instances of thegame and identify some problems that might affect learning.
Oct-9-2011
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