Inexact Newton-CG algorithms with complexity guarantees

Author:

Yao Zhewei1,Xu Peng2,Roosta Fred3,Wright Stephen J4,Mahoney Michael W5

Affiliation:

1. Department of Mathematics, University of California at Berkeley , Berkeley, CA 94720, USA

2. Amazon AWS AI (Work done while at the Institute for Computational and Mathematical Engineering , Stanford University, Stanford, CA 94305, USA)

3. School of Mathematics and Physics, University of Queensland, Bisbane , QLD, 4072, Australia, The Centre for Information Resilience (CIRES), Brisbane, QLD, 4072, Australia, and International Computer Science Institute, Berkeley, CA, 94704, USA

4. Computer Sciences Department, University of Wisconsin-Madison , Madison, WI 53706, USA

5. International Computer Science Institute and Department of Statistics , University of California at Berkeley, Berkeley, CA 94704, USA

Abstract

Abstract We consider variants of a recently developed Newton-CG algorithm for nonconvex problems (Royer, C. W. & Wright, S. J. (2018) Complexity analysis of second-order line-search algorithms for smooth nonconvex optimization. SIAM J. Optim., 28, 1448–1477) in which inexact estimates of the gradient and the Hessian information are used for various steps. Under certain conditions on the inexactness measures, we derive iteration complexity bounds for achieving $\epsilon $-approximate second-order optimality that match best-known lower bounds. Our inexactness condition on the gradient is adaptive, allowing for crude accuracy in regions with large gradients. We describe two variants of our approach, one in which the step size along the computed search direction is chosen adaptively, and another in which the step size is pre-defined. To obtain second-order optimality, our algorithms will make use of a negative curvature direction on some steps. These directions can be obtained, with high probability, using the randomized Lanczos algorithm. In this sense, all of our results hold with high probability over the run of the algorithm. We evaluate the performance of our proposed algorithms empirically on several machine learning models. Our approach is a first attempt to introduce inexact Hessian and/or gradient information into the Newton-CG algorithm of Royer & Wright (2018, Complexity analysis of second-order line-search algorithms for smooth nonconvex optimization. SIAM J. Optim., 28, 1448–1477).

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Computational Mathematics,General Mathematics

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