180
v1v2 (latest)

Lecture Notes on High Dimensional Linear Regression

Main:1 Pages
15 Figures
Appendix:81 Pages
Abstract

These lecture notes cover advanced topics in linear regression, with an in-depth exploration of the existence, uniqueness, relations, computation, and non-asymptotic properties of the most prominent estimators in this setting. The covered estimators include least squares, ridgeless, ridge, and lasso. 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.

View on arXiv
Comments on this paper