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Original Articles

Error estimates for iterative algorithms for minimizing regularized quadratic subproblems

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Pages 304-328 | Received 04 Apr 2019, Accepted 17 Sep 2019, Published online: 07 Oct 2019
 

ABSTRACT

We derive bounds for the objective errors and gradient residuals when finding approximations to the solution of common regularized quadratic optimization problems within evolving Krylov spaces. These provide upper bounds on the number of iterations required to achieve a given stated accuracy. We illustrate the quality of our bounds on given test examples.

2010 MATHEMATICS SUBJECT CLASSIFICATION:

Acknowledgments

The authors are very grateful for fruitful discussions on aspects of this work with Coralia Cartis, Tyrone Rees and Philippe Toint. We also appreciate very helpful comments from two referees and an associate editor.

Disclosure statement

No potential conflict of interest was reported by the authors.

Notes

1 That the ‘arg min's in (Equation4) and (Equation5) are unique follows from Theorems 2.1 and 2.2, since g lies in Kk by construction.

2 The precise details of the implementations of GLTR and GLRT are, of course, important, but of no consequence in the bounds that we derive. Such bounds apply equally for any method that use the iterates (Equation4) or (Equation5).

3 This is equivalently the grade of H with respect to g

4 It will only be a local minimizer of μ+>λ2 [Citation29].

5 Strictly [Citation8, Corollary 3] only considers the case p = 3, but their method of proof holds in general.

6 Another thing we know but we have not used.: 0μ1μkμm for k=1,,m [Citation28].

7 The result would follow if we could show that θ1,k+μk decreases monotonically with growing k.

Additional information

Funding

This work was supported by the Engineering and Physical Sciences Research Council (EPSRC) grant EP/M025179/1.

Notes on contributors

Nicholas I. M. Gould

Nicholas I. M. Gould, an STFC Senior Fellow and Professor of Numerical Optimization, has interests in theoretical and practical optimization, and links to linear algebra. He is a SIAM Fellow, a winner of the Leslie Fox and Beale-Orchard Hays prizes, and his most recent book is /Trust-region Methods/(SIAM, 2000), written jointly with Andy Conn and Philippe Toint.

Valeria Simoncini

Valeria Simoncini, a Professor of Numerical Analysis, has interests in matrix analysis and computations with applications to scientific computing and engineering. She is a SIAM Fellow, and member of several editorial board, including SIAM J. Matrix Analysis and Applications, and SIAM J. Numerical Analysis.

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