The main computational cost per iteration of adaptive cubic regularization methods for solving large-scale nonconvex problems is the computation of the step $s_k$, which requires an approximate minimizer of the cubic model. We propose a new approach in which this minimizer is sought in a low dimensional subspace that, in contrast to classical approaches, is reused for a number of iterations. A regularized Newton step to correct $s_k$ is also incorporated whenever needed. We show that our method increases efficiency while preserving the worst-case complexity of classical cubic regularized methods. We also explore the use of rational Krylov subspaces for the subspace minimization, to overcome some of the issues encountered when using polynomi...
In this paper, we provide theoretical analysis for a cubic regularization of Newton method as applie...
AbstractThis paper examines worst-case evaluation bounds for finding weak minimizers in unconstraine...
A Newton-like method for unconstrained minimization is introduced in the present work. While the com...
Adaptive regularized framework using cubics has emerged as an alternative to line-search and trust-r...
An Adaptive Regularisation algorithm using Cubics (ARC) is proposed for unconstrained optimization, ...
In recent years, cubic regularization algorithms for unconstrained optimization have been defined as...
Regularization of certain linear discrete ill-posed problems, as well as of certain regression probl...
An Adaptive Cubic Overestimation (ACO) algorithm for unconstrained optimization, generalizing a meth...
In this paper we suggest a cubic regularization for a Newton method as applied to unconstrained mini...
The adaptive cubic regularization algorithms described in Cartis, Gould and Toint [Adaptive cubic re...
In this paper, we analyze some theoretical properties of the problem of minimizing a quadratic funct...
Adaptive cubic regularization methods have emerged as a credible alternative to linesearch and trust...
An Adaptive Regularisation framework using Cubics (ARC) was proposed for unconstrained optimization ...
International audienceAbstract An adaptive regularization algorithm (AR$1p$GN) for unconstrained non...
PolyU Library Call No.: [THS] LG51 .H577P AMA 2016 WangHxv, 139 pages :illustrationsWe consider the ...
In this paper, we provide theoretical analysis for a cubic regularization of Newton method as applie...
AbstractThis paper examines worst-case evaluation bounds for finding weak minimizers in unconstraine...
A Newton-like method for unconstrained minimization is introduced in the present work. While the com...
Adaptive regularized framework using cubics has emerged as an alternative to line-search and trust-r...
An Adaptive Regularisation algorithm using Cubics (ARC) is proposed for unconstrained optimization, ...
In recent years, cubic regularization algorithms for unconstrained optimization have been defined as...
Regularization of certain linear discrete ill-posed problems, as well as of certain regression probl...
An Adaptive Cubic Overestimation (ACO) algorithm for unconstrained optimization, generalizing a meth...
In this paper we suggest a cubic regularization for a Newton method as applied to unconstrained mini...
The adaptive cubic regularization algorithms described in Cartis, Gould and Toint [Adaptive cubic re...
In this paper, we analyze some theoretical properties of the problem of minimizing a quadratic funct...
Adaptive cubic regularization methods have emerged as a credible alternative to linesearch and trust...
An Adaptive Regularisation framework using Cubics (ARC) was proposed for unconstrained optimization ...
International audienceAbstract An adaptive regularization algorithm (AR$1p$GN) for unconstrained non...
PolyU Library Call No.: [THS] LG51 .H577P AMA 2016 WangHxv, 139 pages :illustrationsWe consider the ...
In this paper, we provide theoretical analysis for a cubic regularization of Newton method as applie...
AbstractThis paper examines worst-case evaluation bounds for finding weak minimizers in unconstraine...
A Newton-like method for unconstrained minimization is introduced in the present work. While the com...