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ECML
2007
Springer

Transfer Learning in Reinforcement Learning Problems Through Partial Policy Recycling

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Transfer Learning in Reinforcement Learning Problems Through Partial Policy Recycling
In this paper we investigate the relation between transfer learning in reinforcement learning with function approximation and supervised learning with concept drift. We present a new incremental relational regression tree algorithm that is capable of dealing with concept drift through tree restructuring and show that it enables a reinforcement learner, more precisely a Q-learner, to transfer knowledge from one task to another by recycling those parts of the generalized Q-function that still hold interesting information for the new task. We illustrate the performance of the algorithm in experiments with both supervised learning tasks with concept drift and reinforcement learning tasks that allow the transfer of knowledge from easier, related tasks.
Jan Ramon, Kurt Driessens, Tom Croonenborghs
Added 07 Jun 2010
Updated 07 Jun 2010
Type Conference
Year 2007
Where ECML
Authors Jan Ramon, Kurt Driessens, Tom Croonenborghs
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