| SES # | TOPICS | LECTURERS | 
|---|---|---|
| 1 | The Course at a Glance | TP | 
| 2 | The Learning Problem in Perspective | TP | 
| 3 | Reproducing Kernel Hilbert Spaces | AC | 
| 4 | Regression and Least-Squares Classification | RR | 
| 5 | Support Vector Machines for Classification | RR | 
| 6 | Manifold Regularization | AC | 
| 7 | Unsupervised Learning Techniques | AC | 
| 8 | Multiclass | RR | 
| 9 | Ranking | Guest Lecturer: Giorgos Zacharia | 
| 10 | Boosting and Bagging | AR | 
| 11 | Computer Vision Object Detection  | Guest Lecturer: Stan Bileschi | 
| 12 | Online Learning | Guest Lecturer: Sanmay Das and AC | 
| 13 | Loose Ends Project Discussions  | |
| 14 | Generalization Bounds Introduction to Stability  | AR | 
| 15 | Stability of Tikhonov Regularization | AR | 
| 16 | Uniform Convergence Over Function Classes | AR | 
| 17 | Uniform Convergence for Classification VC-dimension  | AR | 
| 18 | Neuroscience | Guest Lecturer: Thomas Serre | 
| 19 | Symmetrization Rademacher Averages  | AR | 
| 20 | Fenchel Duality | Guest Lecturer: Ross Lippert and RR | 
| 21 | Speech / Audio | Guest Lecturer: Jake Bouvrie | 
| 22 | Active Learning | Guest Lecturer: Claire Monteleoni | 
| 23 | Morphable Models for Video | Guest Lecturer: Tony Ezzat | 
| 24 | Bioinformatics | Guest Lecturer: Sayan Mukherjee | 
| 25 | Project Presentations | |
| 26 | Project Presentations (cont.) | |
| Math Camp 1: Functional Analysis | AC | |
| Math Camp 2: Probability Theory | AR |