About
The school provides tutorials and practical sessions on basic and advanced topics of machine learning by leading researchers in the field. The summer school is intended for students, young researchers and industry practitioners with an interest in machine learning and a strong mathematical background.
The school addresses the following topics: Learning Theory, Bayesian inference, Monte Carlo Methods, Sparse Methods, Reinforcement Learning, Robot Learning, Boosting, Kernel Methods, Bayesian Nonparametrics, Convex Optimization and Graphical Models.
Detailed information can be found at the summer school homepage.
Videos
Invited Talks
Low-rank modeling
Oct 12, 2011
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24654 views
Early language bootstrapping
Emmanuel Dupoux
Oct 12, 2011
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5731 views
Tutorials
Bayesian Nonparametrics
Yee Whye Teh
Oct 12, 2011
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35922 views
Bayesian Inference
Peter Green
Oct 12, 2011
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27942 views
Learning Theory: statistical and game-theoretic approaches
Nicolò Cesa-Bianchi
Oct 12, 2011
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8143 views
Kernel Methods
Bernhard Schölkopf
Oct 12, 2011
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16119 views
Sparse Methods for Under-determined Inverse Problems
Rémi Gribonval
Oct 12, 2011
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8705 views
Monte Carlo Methods
Arnaud Doucet
Oct 12, 2011
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18167 views
Graphical Models and message-passing algorithms
Martin J. Wainwright
Oct 12, 2011
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29146 views
Convex Optimization
Lieven Vandenberghe
Oct 12, 2011
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21469 views