Kernel Methods for Pattern Analysis
4
Algorithms and machine learning
Advanced studies
The course gives a comprehensive introduction to the problems of pattern analysis and the kernel methods approach to their solution. Kernel methods rely on the implementation of linear pattern functions in high dimensional feature spaces defined implicitly via a kernel function. The course will cover the statistical implications, algorithmic solutions and kernel design strategies that make this approach a modular and flexible way to tackle real-world tasks.
Lectures
Time | Room | Lecturer | Date |
---|---|---|---|
Mon 9-15 | CK107 | John Shawe-Taylor | 18.10.2004-22.10.2004 |
Tue 9-15 | CK107 | John Shawe-Taylor | 18.10.2004-22.10.2004 |
Wed 9-15 | CK107 | John Shawe-Taylor | 18.10.2004-22.10.2004 |
Thu 9-15 | CK107 | John Shawe-Taylor | 18.10.2004-22.10.2004 |
The number of participants is restricted. Please enroll for the course
only, if you feel that you have solid background and can participate
to lectures and group sessions every day. Acc/rej on 14th of October.