This repository contains the practical session notebooks for the Mathematics of Machine Learning summer school.
DAY 1
Activity | Topic |
---|---|
Lecture 1 | Introduction |
Practical 1 | Robust One-Dimensional Mean Estimation |
Lecture 2 | Concentration Inequalities. Bounds in Probability |
Practical 2 | Model Selection Aggregation (Exercises 1-8) |
DAY 2
Activity | Topic |
---|---|
Lecture 3 | Bernstein’s Concentration Inequalities. Fast Rates |
Practical 3 | Model Selection Aggregation (Exercises 9-12) |
Lecture 4 | Maximal Inequalities and Rademacher Complexity |
Practical 4 | Offset Rademacher Complexity |
DAY 3
Activity | Topic |
---|---|
Lecture 5 | Convex Loss Surrogates. Gradient Descent |
Practical 5 | Optimization (Exercises 1-4) |
Lecture 6 | Mirror Descent |
Practical 6 | Optimization (Exercises 5-6) |
DAY 4
Activity | Topic |
---|---|
Lecture 7 | Stochastic Methods. Algorithmic Stability |
Practical 7 | Limitations of Gradient-Based Learning |
Lecture 8 | Least Squares. Implicit Bias and Regularization |
Practical 8 | Implicit Regularization |
DAY 5
Activity | Topic |
---|---|
Lecture 9 | High-Dimensional Statistics. Gaussian Complexity |
Practical 9 | Compressed Sensing |
Lecture 10 | The Lasso Estimator. Proximal Gradient Methods |
Practical 10 | Restricted Eigenvalue Condition |