Proximal stabilized interior point methods and low-frequency-update preconditioning techniques
Proximal stabilized interior point methods and low-frequency-update preconditioning techniques
In this work, in the context of Linear and convex Quadratic Programming, we consider Primal Dual Regularized Interior Point Methods (PDR-IPMs) in the framework of the Proximal Point Method. The resulting Proximal Stabilized IPM (PS-IPM) is strongly supported by theoretical results concerning convergence and the rate of convergence, and can handle degenerate problems. Moreover, in the second part of this work, we analyse the interactions between the regularization parameters and the computational footprint of the linear algebra routines used to solve the Newton linear systems. In particular, when these systems are solved using an iterative Krylov method, we are able to show—using a new rearrangement of the Schur complement which exploits regularization—that general purposes preconditioners remain attractive for a series of subsequent IPM iterations. Indeed, if on the one hand a series of theoretical results underpin the fact that the approach here presented allows a better re-use of such computed preconditioners, on the other, we show experimentally that such (re)computations are needed only in a fraction of the total IPM iterations. The resulting regularized second order methods, for which low-frequency-update of the preconditioners are allowed, pave the path for an alternative class of second order methods characterized by reduced computational effort.
Convex quadratic programming, Interior point methods, Proximal point methods, Regularized primal-dual methods
1061-1103
Cipolla, Stefano
373fdd4b-520f-485c-b36d-f75ce33d4e05
Gondzio, Jacek
83e55b47-99a9-4f07-bbd0-79258ce12830
June 2023
Cipolla, Stefano
373fdd4b-520f-485c-b36d-f75ce33d4e05
Gondzio, Jacek
83e55b47-99a9-4f07-bbd0-79258ce12830
Cipolla, Stefano and Gondzio, Jacek
(2023)
Proximal stabilized interior point methods and low-frequency-update preconditioning techniques.
Journal of Optimization Theory and Applications, 197, .
(doi:10.1007/s10957-023-02194-4).
Abstract
In this work, in the context of Linear and convex Quadratic Programming, we consider Primal Dual Regularized Interior Point Methods (PDR-IPMs) in the framework of the Proximal Point Method. The resulting Proximal Stabilized IPM (PS-IPM) is strongly supported by theoretical results concerning convergence and the rate of convergence, and can handle degenerate problems. Moreover, in the second part of this work, we analyse the interactions between the regularization parameters and the computational footprint of the linear algebra routines used to solve the Newton linear systems. In particular, when these systems are solved using an iterative Krylov method, we are able to show—using a new rearrangement of the Schur complement which exploits regularization—that general purposes preconditioners remain attractive for a series of subsequent IPM iterations. Indeed, if on the one hand a series of theoretical results underpin the fact that the approach here presented allows a better re-use of such computed preconditioners, on the other, we show experimentally that such (re)computations are needed only in a fraction of the total IPM iterations. The resulting regularized second order methods, for which low-frequency-update of the preconditioners are allowed, pave the path for an alternative class of second order methods characterized by reduced computational effort.
Text
s10957-023-02194-4
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Accepted/In Press date: 1 March 2023
e-pub ahead of print date: 5 April 2023
Published date: June 2023
Keywords:
Convex quadratic programming, Interior point methods, Proximal point methods, Regularized primal-dual methods
Identifiers
Local EPrints ID: 485185
URI: http://eprints.soton.ac.uk/id/eprint/485185
ISSN: 0022-3239
PURE UUID: 5323786b-6d7b-412e-bd07-84f3b20f5aeb
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Date deposited: 30 Nov 2023 17:58
Last modified: 18 Mar 2024 04:17
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Contributors
Author:
Stefano Cipolla
Author:
Jacek Gondzio
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