Benign Overfitting of Constant-Stepsize SGD for Linear Regression

Abstract

There is an increasing realization that algorithmic inductive biases are central in preventing overfitting; empirically, we often see a benign overfitting phenomenon in overparameterized settings for natural learning algorithms, such as stochastic gradient descent (SGD), where little to no explicit regularization has been employed. This work considers this issue in arguably the most basic setting: constant-stepsize SGD (with iterate averaging) for linear regression in the overparameterized regime. Our main result provides a sharp excess risk bound, stated in terms of the full eigenspectrum of the data covariance matrix, that reveals a bias-variance decomposition characterizing when generalization is possible: (i) the variance bound is characterized in terms of an effective dimension and (ii) the bias bound provides a sharp geometric characterization in terms of the location of the initial iterate (and how it aligns with the data covariance matrix). We reflect on a number of notable differences between the algorithmic regularization afforded by (unregularized) SGD in comparison to ordinary least squares (minimum-norm interpolation) and ridge regression.

Cite

Text

Zou et al. "Benign Overfitting of Constant-Stepsize SGD for Linear Regression." Conference on Learning Theory, 2021.

Markdown

[Zou et al. "Benign Overfitting of Constant-Stepsize SGD for Linear Regression." Conference on Learning Theory, 2021.](https://mlanthology.org/colt/2021/zou2021colt-benign/)

BibTeX

@inproceedings{zou2021colt-benign,
  title     = {{Benign Overfitting of Constant-Stepsize SGD for Linear Regression}},
  author    = {Zou, Difan and Wu, Jingfeng and Braverman, Vladimir and Gu, Quanquan and Kakade, Sham},
  booktitle = {Conference on Learning Theory},
  year      = {2021},
  pages     = {4633-4635},
  volume    = {134},
  url       = {https://mlanthology.org/colt/2021/zou2021colt-benign/}
}