Exact and inexact subsampled Newton methods for optimization
Author(s) -
Raghu Bollapragada,
Richard H. Byrd,
Jorge Nocedal
Publication year - 2018
Publication title -
ima journal of numerical analysis
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.672
H-Index - 66
eISSN - 1464-3642
pISSN - 0272-4979
DOI - 10.1093/imanum/dry009
Subject(s) - hessian matrix , conjugate gradient method , mathematics , quasi newton method , nonlinear conjugate gradient method , newton's method in optimization , newton's method , hessian equation , convergence (economics) , gradient method , gradient descent , rate of convergence , mathematical optimization , stochastic gradient descent , iterative method , computer science , nonlinear system , local convergence , mathematical analysis , artificial intelligence , artificial neural network , partial differential equation , channel (broadcasting) , first order partial differential equation , economic growth , computer network , quantum mechanics , physics , economics
The paper studies the solution of stochastic optimization problems in which approximations to the gradient and Hessian are obtained through subsampling. We first consider Newton-like methods that employ these approximations and discuss how to coordinate the accuracy in the gradient and Hessian to yield a superlinear rate of convergence in expectation. The second part of the paper analyzes an inexact Newton method that solves linear systems approximately using the conjugate gradient (CG) method, and that samples the Hessian and not the gradient (the gradient is assumed to be exact). We provide a complexity analysis for this method based on the properties of the CG iteration and the quality of the Hessian approximation, and compare it with a method that employs a stochastic gradient iteration instead of the CG method. We report preliminary numerical results that illustrate the performance of inexact subsampled Newton methods on machine learning applications based on logistic regression.
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