Newton- mr:带最小残差子问题求解的不精确牛顿法

IF 2.6 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE EURO Journal on Computational Optimization Pub Date : 2022-01-01 DOI:10.1016/j.ejco.2022.100035
Fred Roosta , Yang Liu , Peng Xu , Michael W. Mahoney
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引用次数: 8

摘要

我们考虑了非精确牛顿法的一种变体,称为Newton- mr,其中使用最小残差法近似求解最小二乘子问题[79]。通过构造,牛顿- mr可以很容易地应用于一类非凸问题的无约束优化,即逆问题,它将凸性作为子类。对于逆优化,在较弱的Hessian和梯度的联合正则性概念下,Newton-MR的全局收敛性可以得到保证,而不是经典的关于梯度和Hessian的Lipschitz连续性假设。我们还得到了Newton-MR对极小集的独立于问题的局部收敛性。我们证明了在新的不精确条件下可以保证快速的局部/全局收敛,据我们所知,这比之前的相关工作弱得多。数值结果表明,在一些机器学习问题上,与其他几种牛顿型替代方法相比,牛顿- mr的性能更好。
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Newton-MR: Inexact Newton Method with minimum residual sub-problem solver

We consider a variant of inexact Newton Method [20], [40], called Newton-MR, in which the least-squares sub-problems are solved approximately using Minimum Residual method [79]. By construction, Newton-MR can be readily applied for unconstrained optimization of a class of non-convex problems known as invex, which subsumes convexity as a sub-class. For invex optimization, instead of the classical Lipschitz continuity assumptions on gradient and Hessian, Newton-MR's global convergence can be guaranteed under a weaker notion of joint regularity of Hessian and gradient. We also obtain Newton-MR's problem-independent local convergence to the set of minima. We show that fast local/global convergence can be guaranteed under a novel inexactness condition, which, to our knowledge, is much weaker than the prior related works. Numerical results demonstrate the performance of Newton-MR as compared with several other Newton-type alternatives on a few machine learning problems.

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来源期刊
EURO Journal on Computational Optimization
EURO Journal on Computational Optimization OPERATIONS RESEARCH & MANAGEMENT SCIENCE-
CiteScore
3.50
自引率
0.00%
发文量
28
审稿时长
60 days
期刊介绍: The aim of this journal is to contribute to the many areas in which Operations Research and Computer Science are tightly connected with each other. More precisely, the common element in all contributions to this journal is the use of computers for the solution of optimization problems. Both methodological contributions and innovative applications are considered, but validation through convincing computational experiments is desirable. The journal publishes three types of articles (i) research articles, (ii) tutorials, and (iii) surveys. A research article presents original methodological contributions. A tutorial provides an introduction to an advanced topic designed to ease the use of the relevant methodology. A survey provides a wide overview of a given subject by summarizing and organizing research results.
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