How to Escape Sharp Minima with Random Perturbations

Kwangjun Ahn, Ali Jadbabaie, Suvrit Sra

Publikation: Beitrag in FachzeitschriftKonferenzartikelBegutachtung

Abstract

Modern machine learning applications have witnessed the remarkable success of optimization algorithms that are designed to find flat minima. Motivated by this design choice, we undertake a formal study that (i) formulates the notion of flat minima, and (ii) studies the complexity of finding them. Specifically, we adopt the trace of the Hessian of the cost function as a measure of flatness, and use it to formally define the notion of approximate flat minima. Under this notion, we then analyze algorithms that find approximate flat minima efficiently. For general cost functions, we discuss a gradient-based algorithm that finds an approximate flat local minimum efficiently. The main component of the algorithm is to use gradients computed from randomly perturbed iterates to estimate a direction that leads to flatter minima. For the setting where the cost function is an empirical risk over training data, we present a faster algorithm that is inspired by a recently proposed practical algorithm called sharpness-aware minimization, supporting its success in practice.

OriginalspracheEnglisch
Seiten (von - bis)597-618
Seitenumfang22
FachzeitschriftProceedings of Machine Learning Research
Jahrgang235
PublikationsstatusVeröffentlicht - 2024
Veranstaltung41st International Conference on Machine Learning, ICML 2024 - Vienna, Österreich
Dauer: 21 Juli 202427 Juli 2024

Fingerprint

Untersuchen Sie die Forschungsthemen von „How to Escape Sharp Minima with Random Perturbations“. Zusammen bilden sie einen einzigartigen Fingerprint.

Dieses zitieren