A Novel Gaussian Min-Max Theorem and its Applications
Journal article, 2025

A celebrated result by Gordon allows one to compare the min-max behavior of two Gaussian processes if certain inequality conditions are met. The consequences of this result include the Gaussian min-max (GMT) and convex Gaussian min-max (CGMT) theorems which have had far-reaching implications in high-dimensional statistics, machine learning, non-smooth optimization, and signal processing. Both theorems rely on a pair of Gaussian processes, first identified by Slepian, that satisfy Gordon's comparison inequalities. In this paper, we identify a new pair of Gaussian processes satisfying these inequalities. The resulting theorems extend the classical GMT and CGMT Theorems from the case where the underlying Gaussian matrix in the primary process has iid rows to where it has independent but non-identically-distributed ones. The new CGMT is applied to the problems of multi-source Gaussian regression, as well as to binary classification of general Gaussian mixture models.

Binary Classification

Generalization Error

Gaussian Comparison Inequalities

Precise Analysis

Gaussian Convex Min-Max Theorem

Concentration Inequalities

Multi-source Regression

Author

Danil Akhtiamov

California Institute of Technology (Caltech)

Reza Ghane

California Institute of Technology (Caltech)

Nithin K. Varma

California Institute of Technology (Caltech)

Babak Hassibi

California Institute of Technology (Caltech)

David Bosch

Chalmers, Computer Science and Engineering (Chalmers), Data Science and AI

IEEE Transactions on Information Theory

0018-9448 (ISSN) 1557-9654 (eISSN)

Vol. In Press

Subject Categories (SSIF 2025)

Probability Theory and Statistics

Signal Processing

DOI

10.1109/TIT.2025.3595521

More information

Latest update

8/15/2025