Imitative Reinforcement Learning for Soccer Playing Robots
- Authors: Tobias Latzke, Sven Behnke, and Maren Bennewitz
- In Proceedings of: 10th RoboCup International Symposium, Bremen, 06/2006.
- Abstract:
In this paper, we apply Reinforcement Learning (RL) to a real-world
task. While complex problems have been solved by RL in simulated
worlds, the costs of obtaining enough training examples often prohibits
the use of plain RL in real-world scenarios.We propose three approaches
to reduce training expenses for real-world RL. Firstly, we replace the
random exploration of the huge search space, which plain RL uses, by
guided exploration that imitates a teacher. Secondly, we use
experiences not only once but store and reuse them later on when their
value is easier to assess. Finally, we utilize function approximators
in order to represent the experience in a way that balances between
generalization and discrimination.We evaluate the performance of the
combined extensions of plain RL using a humanoid robot in the RoboCup
soccer domain. As we show in simulation and real-world experiments, our
approach enables the robot to quickly learn fundamental soccer skills.
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