Skip to main navigation Skip to search Skip to main content

Last Iterate Risk Bounds of SGD with Decaying Stepsize for Overparameterized Linear Regression

  • Jingfeng Wu
  • , Difan Zou
  • , Vladimir Braverman
  • , Quanquan Gu
  • , Sham M. Kakade

Research output: Contribution to journalConference articlepeer-review

12 Scopus citations

Abstract

Stochastic gradient descent (SGD) has been shown to generalize well in many deep learning applications. In practice, one often runs SGD with a geometrically decaying stepsize, i.e., a constant initial stepsize followed by multiple geometric stepsize decay, and uses the last iterate as the output. This kind of SGD is known to be nearly minimax optimal for classical finite-dimensional linear regression problems (Ge et al., 2019). However, a sharp analysis for the last iterate of SGD in the overparameterized setting is still open. In this paper, we provide a problem-dependent analysis on the last iterate risk bounds of SGD with decaying stepsize, for (overparameterized) linear regression problems. In particular, for last iterate SGD with (tail) geometrically decaying stepsize, we prove nearly matching upper and lower bounds on the excess risk. Moreover, we provide an excess risk lower bound for last iterate SGD with polynomially decaying stepsize and demonstrate the advantage of geometrically decaying stepsize in an instance-wise manner, which complements the minimax rate comparison made in prior works.

Original languageEnglish
Pages (from-to)24280-24314
Number of pages35
JournalProceedings of Machine Learning Research
Volume162
StatePublished - 1 Jan 2022
Externally publishedYes
Event39th International Conference on Machine Learning, ICML 2022 - Baltimore, United States
Duration: 17 Jul 202223 Jul 2022

ASJC Scopus subject areas

  • Artificial Intelligence
  • Software
  • Control and Systems Engineering
  • Statistics and Probability

Fingerprint

Dive into the research topics of 'Last Iterate Risk Bounds of SGD with Decaying Stepsize for Overparameterized Linear Regression'. Together they form a unique fingerprint.

Cite this