Statistical Learning

Lecturer: Michael Vogt

Exercises: Manuel Rosenbaum

General Informations:

Lectures:Thursdays, 12:15-13:45, Room E20 (Heho 18)
Exercises:Tuesdays, 14:15-15:15, Room 120 (Heho 18)
Contents:
1. Classification and Regression Problems
- Statistical decision theory
- Binary classification
- Logistic regression

2. Technical Tools
- Exponential inequalities
- Sub-Gaussian random variables
- Concentration inequalities 

3. Uniform Convergence and Generalization
- Classification with 0-1-loss
- Convex relaxation for classification
- Regression

4. Neural Networks
- Definition of deep neural networks
- Statistical model
- Generalization bounds based on Rademacher complexity


 
Moodle