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A Study of Layered Learning Strategies Applied to Individual Behaviors in Robot Soccer (2016)
David L. Leottau, Javier Ruiz-del-Solar,
Patrick MacAlpine
, and
Peter Stone
Hierarchical task decomposition strategies allow robots and agents in general to address complex decision-making tasks. Layered learning is a hierarchical machine learning paradigm where a complex behavior is learned from a series of incrementally trained sub-tasks. This paper describes how layered learning can be applied to design individual behaviors in the context of soccer robotics. Three different layered learning strategies are implemented and analyzed using a ball-dribbling behavior as a case study. Performance indices for evaluating dribbling speed and ball-control are defined and measured. Experimental results validate the usefulness of the implemented layered learning strategies showing a trade-off between performance and learning speed.
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Citation:
In
{R}obo{C}up-2015: Robot Soccer World Cup {XIX}
, Luis Almeida and Jianmin Ji and Gerald Steinbauer and Sean Luke (Eds.), Berlin, Germany 2016. Springer Verlag.
Bibtex:
@incollection{LNAI15-Leottau, title={A Study of Layered Learning Strategies Applied to Individual Behaviors in Robot Soccer}, author={David L. Leottau and Javier Ruiz-del-Solar and Patrick MacAlpine and Peter Stone}, booktitle={{R}obo{C}up-2015: Robot Soccer World Cup {XIX}}, editor={Luis Almeida and Jianmin Ji and Gerald Steinbauer and Sean Luke}, address={Berlin, Germany}, publisher={Springer Verlag}, url="http://www.cs.utexas.edu/users/ai-lab?leottau:lnai15", year={2016} }
People
Patrick MacAlpine
Ph.D. Student
patmac [at] cs utexas edu
Peter Stone
Faculty
pstone [at] cs utexas edu
Areas of Interest
Humanoid Robots
Layered Learning
RoboCup
Simulated Robot Soccer
Labs
Learning Agents