International audienceAdaptive regularized framework using cubics has emerged as an alternative to line-search and trust-region algorithms for smooth nonconvex optimization, with an optimal complexity amongst second-order methods. In this paper, we propose and analyze the use of an iteration dependent scaled norm in the adaptive regularized framework using cubics. Within such scaled norm, the obtained method behaves as a line-search algorithm along the quasi- Newton direction with a special backtracking strategy. Under appropriate assumptions, the new algorithm enjoys the same convergence and complexity properties as adaptive regularized algorithm using cubics. The complexity for finding an approximate first-order stationary point can be im...
An adaptive projected affine scaling algorithm of cubic regularization method using a filter techniq...
The main computational cost per iteration of adaptive cubic regularization methods for solving large...
An Adaptive Regularisation algorithm using Cubics (ARC) is proposed for unconstrained opti-mization,...
Adaptive regularized framework using cubics has emerged as an alternative to line-search and trust-r...
In recent years, cubic regularization algorithms for unconstrained optimization have been defined as...
In this paper we suggest a cubic regularization for a Newton method as applied to unconstrained mini...
An Adaptive Regularisation algorithm using Cubics (ARC) is proposed for unconstrained optimization, ...
An Adaptive Regularisation framework using Cubics (ARC) was proposed for unconstrained optimization ...
The adaptive cubic regularization algorithms described in Cartis, Gould and Toint [Adaptive cubic re...
This thesis proposes a new active-set method for large-scale nonlinearly con strained optimization. ...
Adaptive cubic regularization methods have emerged as a credible alternative to linesearch and trust...
Line searches and trust regions are two techniques to globalize nonlinear optimization algorithms. W...
The adaptive cubic regularization method solves an unconstrained optimization model by using a three...
The paper addresses the problem of low-rank trace norm minimization. We propose an algorithm that al...
In this paper, we provide theoretical analysis for a cubic regularization of Newton method as applie...
An adaptive projected affine scaling algorithm of cubic regularization method using a filter techniq...
The main computational cost per iteration of adaptive cubic regularization methods for solving large...
An Adaptive Regularisation algorithm using Cubics (ARC) is proposed for unconstrained opti-mization,...
Adaptive regularized framework using cubics has emerged as an alternative to line-search and trust-r...
In recent years, cubic regularization algorithms for unconstrained optimization have been defined as...
In this paper we suggest a cubic regularization for a Newton method as applied to unconstrained mini...
An Adaptive Regularisation algorithm using Cubics (ARC) is proposed for unconstrained optimization, ...
An Adaptive Regularisation framework using Cubics (ARC) was proposed for unconstrained optimization ...
The adaptive cubic regularization algorithms described in Cartis, Gould and Toint [Adaptive cubic re...
This thesis proposes a new active-set method for large-scale nonlinearly con strained optimization. ...
Adaptive cubic regularization methods have emerged as a credible alternative to linesearch and trust...
Line searches and trust regions are two techniques to globalize nonlinear optimization algorithms. W...
The adaptive cubic regularization method solves an unconstrained optimization model by using a three...
The paper addresses the problem of low-rank trace norm minimization. We propose an algorithm that al...
In this paper, we provide theoretical analysis for a cubic regularization of Newton method as applie...
An adaptive projected affine scaling algorithm of cubic regularization method using a filter techniq...
The main computational cost per iteration of adaptive cubic regularization methods for solving large...
An Adaptive Regularisation algorithm using Cubics (ARC) is proposed for unconstrained opti-mization,...