English

A Progressive Batching L-BFGS Method for Machine Learning

Optimization and Control 2018-05-31 v2 Machine Learning Machine Learning

Abstract

The standard L-BFGS method relies on gradient approximations that are not dominated by noise, so that search directions are descent directions, the line search is reliable, and quasi-Newton updating yields useful quadratic models of the objective function. All of this appears to call for a full batch approach, but since small batch sizes give rise to faster algorithms with better generalization properties, L-BFGS is currently not considered an algorithm of choice for large-scale machine learning applications. One need not, however, choose between the two extremes represented by the full batch or highly stochastic regimes, and may instead follow a progressive batching approach in which the sample size increases during the course of the optimization. In this paper, we present a new version of the L-BFGS algorithm that combines three basic components - progressive batching, a stochastic line search, and stable quasi-Newton updating - and that performs well on training logistic regression and deep neural networks. We provide supporting convergence theory for the method.

Keywords

Cite

@article{arxiv.1802.05374,
  title  = {A Progressive Batching L-BFGS Method for Machine Learning},
  author = {Raghu Bollapragada and Dheevatsa Mudigere and Jorge Nocedal and Hao-Jun Michael Shi and Ping Tak Peter Tang},
  journal= {arXiv preprint arXiv:1802.05374},
  year   = {2018}
}

Comments

ICML 2018. 25 pages, 17 figures, 2 tables

R2 v1 2026-06-23T00:23:01.451Z