Skip to content

alan-turing-institute/mathematics-of-ml-course

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

22 Commits
 
 
 
 
 
 

Repository files navigation

Mathematics of Machine Learning - Summer School

This repository contains the practical session notebooks for the Mathematics of Machine Learning summer school.

Schedule

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

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published