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State Abstraction in MAXQ Hierarchical Reinforcement Learning

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arxiv cs/9905015 v1 pith:QGOBG32B submitted 1999-05-21 cs.LG

State Abstraction in MAXQ Hierarchical Reinforcement Learning

classification cs.LG
keywords learningstateabstractionhierarchicalmaxqabstractionsactionsconditions
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Many researchers have explored methods for hierarchical reinforcement learning (RL) with temporal abstractions, in which abstract actions are defined that can perform many primitive actions before terminating. However, little is known about learning with state abstractions, in which aspects of the state space are ignored. In previous work, we developed the MAXQ method for hierarchical RL. In this paper, we define five conditions under which state abstraction can be combined with the MAXQ value function decomposition. We prove that the MAXQ-Q learning algorithm converges under these conditions and show experimentally that state abstraction is important for the successful application of MAXQ-Q learning.

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