Reinforcement Learning in continuous state-spaces
- đ¤ Speaker: Philip Sterne (University of Cambridge)
- đ Date & Time: Monday 26 November 2007, 11:15 - 12:15
- đ Venue: TCM Seminar Room, Cavendish Laboratory, Department of Physics
Abstract
For this journal club I am interested in continuous state-space reinforcement learning. It is my gut feeling that if one makes enough simplifying assumptions then the problem becomes solvable (if computational concerns are ignored).
It would be great if everyone attending could spend some time thinking about which assumptions would make the solution easier (yet still interesting) and what form the various (intractable) integrals would have.
If you believe that Gaussian Processes might provide a good starting point for your thoughts, have a look at the following papers (though they are not essential if you have your own ideas)
There is also a relevant video lecture by Engel available here
Series This talk is part of the Machine Learning Journal Club series.
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Monday 26 November 2007, 11:15-12:15