DocumentCode
3060121
Title
Supervised reinforcement learning using behavior models
Author
Cetina, Víctor Uc
Author_Institution
Humboldt-Univ. zu Berlin, Berlin
fYear
2007
fDate
13-15 Dec. 2007
Firstpage
336
Lastpage
341
Abstract
We introduce a supervised reinforcement learning (SRL) architecture for robot control problems with high dimensional state spaces. Based on such architecture two new SRL algorithms are proposed. In our algorithms, a behavior model learned from examples is used to dynamically reduce the set of actions available from each state during the early reinforcement learning (RL) process. The creation of such subsets of actions leads the agent to exploit relevant parts of the action space, avoiding the selection of irrelevant actions. Once the agent has exploited the information provided by the behavior model, it keeps improving its value function without any help, by selecting the next actions to be performed from the complete action space. Our experimental work shows clearly how this approach can dramatically speed up the learning process.
Keywords
learning (artificial intelligence); robots; action space; behavior models; high dimensional state spaces; robot control problems; supervised reinforcement learning; Acceleration; Application software; Computer architecture; Computer science; Humans; Machine learning; Robot control; State-space methods; Supervised learning; Watches;
fLanguage
English
Publisher
ieee
Conference_Titel
Machine Learning and Applications, 2007. ICMLA 2007. Sixth International Conference on
Conference_Location
Cincinnati, OH
Print_ISBN
978-0-7695-3069-7
Type
conf
DOI
10.1109/ICMLA.2007.14
Filename
4457253
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