IFSA: incremental feature-set augmentation for reinforcement learning tasks

Proceedings of the 6th international joint conference on Autonomous agents and multiagent systems(2007)

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摘要
Reinforcement learning is a popular and successful framework for many agent-related problems because only limited environmental feedback is necessary for learning. While many algorithms exist to learn effective policies in such problems, learning is often used to solve real world problems, which typically have large state spaces, and therefore suffer from the "curse of dimensionality." One effective method for speeding-up reinforcement learning algorithms is to leverage expert knowledge. In this paper, we propose a method for dynamically augmenting the agent's feature set in order to speed up value-function-based reinforcement learning. The domain expert divides the feature set into a series of subsets such that a novel problem concept can be learned from each successive subset. Domain knowledge is also used to order the feature subsets in order of their importance for learning. Our algorithm uses the ordered feature subsets to learn tasks significantly faster than if the entire feature set is used from the start. Incremental Feature-Set Augmentation (IFSA) is fully implemented and tested in three different domains: Gridworld, Blackjack and RoboCup Soccer Keepaway. All experiments show that IFSA can significantly speed up learning and motivates the applicability of this novel RL method.
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关键词
novel rl method,value-function-based reinforcement learning,speeding-up reinforcement,feature subsets,effective method,incremental feature-set augmentation,entire feature set,domain knowledge,domain expert,reinforcement learning,different domain,value function,state space,curse of dimensionality
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