The (optimal) function/gradient evaluations worst-case complexity analysis available for the adaptive regularization algorithms with cubics (ARC) for nonconvex smooth unconstrained optimization is extended to finite-difference versions of this algorithm, yielding complexity bounds for first-order and derivative-free methods applied on the same problem class. A comparison with the results obtained for derivative-free methods by Vicente [Worst Case Complexity of Direct Search, Technical report, Preprint 10-17, Department of Mathematics, University of Coimbra, Coimbra, Portugal, 2010] is also discussed, giving some theoretical insight into the relative merits of various methods in this popular class of algorithms. © 2012 Society for Industrial...
International audienceAbstract An adaptive regularization algorithm (AR$1p$GN) for unconstrained non...
An adaptive regularization algorithm using inexact function and derivatives evaluations is proposed ...
The problem of minimax optimization arises in a wide range of applications. When the objective funct...
The (optimal) function/gradient evaluations worst-case complexity analysis available for the adaptiv...
An Adaptive Regularisation framework using Cubics (ARC) was 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...
An adaptive regularization algorithm for unconstrained nonconvex optimization is presented in which ...
International audienceOpen Archive Toulouse Archive Ouverte OATAO is an open access repository that ...
We provide sharp worst-case evaluation complexity bounds for nonconvex minimization problems with ge...
An adaptive regularization algorithm for unconstrained nonconvex optimization is presented in which ...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
In the context of the derivative-free optimization of a smooth objective function, it has been shown...
International audienceAbstract An adaptive regularization algorithm (AR$1p$GN) for unconstrained non...
International audienceAbstract An adaptive regularization algorithm (AR$1p$GN) for unconstrained non...
An adaptive regularization algorithm using inexact function and derivatives evaluations is proposed ...
The problem of minimax optimization arises in a wide range of applications. When the objective funct...
The (optimal) function/gradient evaluations worst-case complexity analysis available for the adaptiv...
An Adaptive Regularisation framework using Cubics (ARC) was 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...
An adaptive regularization algorithm for unconstrained nonconvex optimization is presented in which ...
International audienceOpen Archive Toulouse Archive Ouverte OATAO is an open access repository that ...
We provide sharp worst-case evaluation complexity bounds for nonconvex minimization problems with ge...
An adaptive regularization algorithm for unconstrained nonconvex optimization is presented in which ...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
In the context of the derivative-free optimization of a smooth objective function, it has been shown...
International audienceAbstract An adaptive regularization algorithm (AR$1p$GN) for unconstrained non...
International audienceAbstract An adaptive regularization algorithm (AR$1p$GN) for unconstrained non...
An adaptive regularization algorithm using inexact function and derivatives evaluations is proposed ...
The problem of minimax optimization arises in a wide range of applications. When the objective funct...