Lecture Notes on High Dimensional Linear Regression

Quaini, Alberto

arXiv.org Machine Learning 

These lecture notes were developed for a Master's course in advanced machine learning at Erasmus University of Rotterdam. The course is designed for graduate students in mathematics, statistics and econometrics. The content follows a proposition-proof structure, making it suitable for students seeking a formal and rigorous understanding of the statistical theory underlying machine learning methods. At present, the notes focus on linear regression, with an in-depth exploration of the existence, uniqueness, relations, computation, and nonasymptotic properties of the most prominent estimators in this setting: least squares, ridgeless, ridge, and lasso. Background It is assumed that readers have a solid background in calculus, linear algebra, convex analysis, and probability theory.