High-order optimality conditions for convexly-constrained nonlinear optimization problems are analyzed. A corresponding (expensive) measure of criticality for arbitrary order is proposed and extended to define high-order ∈-approximate critical points. This new measure is then used within a conceptual trust-region algorithm to show that, if deriva- tives of the objective function up to order q ≥ 1 can be evaluated and are Lipschitz continuous, then this algorithm applied to the convexly constrained problem needs at most O(∈^−(q+1)) evaluations of f and its derivatives to compute an ∈-approximate q-th order critical point. This provides the first evaluation complexity result for critical points of arbitrary order in nonlinear optimization. An...
Abstract. Necessary conditions for an abstract optimization problem are derived under weak assump-ti...
AbstractThis paper examines worst-case evaluation bounds for finding weak minimizers in unconstraine...
This is a short tutorial on complexity studies for differentiable convex optimization. A complexity ...
High-order optimality conditions for convexly-constrained nonlinear optimization problems are analyz...
Evaluation complexity for convexly constrained optimization is considered and it is shown first that...
Evaluation complexity for convexly constrained optimization is considered and it is shown first that...
When solving the general smooth nonlinear and possibly nonconvex optimization problem involving equ...
An adaptive regularization algorithm is proposed that uses Taylor models of the objective of order p...
An adaptive regularization algorithm is proposed that uses Taylor models of the objective of order p...
The complexity of finding {Mathematical expression}-approximate first-order critical points for the ...
FAPESP - FUNDAÇÃO DE AMPARO À PESQUISA DO ESTADO DE SÃO PAULOCNPQ - CONSELHO NACIONAL DE DESENVOLVIM...
We provide sharp worst-case evaluation complexity bounds for nonconvex minimization problems with ge...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
Abstract It is well known that second-order information is a basic tool notably in optimality condit...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
Abstract. Necessary conditions for an abstract optimization problem are derived under weak assump-ti...
AbstractThis paper examines worst-case evaluation bounds for finding weak minimizers in unconstraine...
This is a short tutorial on complexity studies for differentiable convex optimization. A complexity ...
High-order optimality conditions for convexly-constrained nonlinear optimization problems are analyz...
Evaluation complexity for convexly constrained optimization is considered and it is shown first that...
Evaluation complexity for convexly constrained optimization is considered and it is shown first that...
When solving the general smooth nonlinear and possibly nonconvex optimization problem involving equ...
An adaptive regularization algorithm is proposed that uses Taylor models of the objective of order p...
An adaptive regularization algorithm is proposed that uses Taylor models of the objective of order p...
The complexity of finding {Mathematical expression}-approximate first-order critical points for the ...
FAPESP - FUNDAÇÃO DE AMPARO À PESQUISA DO ESTADO DE SÃO PAULOCNPQ - CONSELHO NACIONAL DE DESENVOLVIM...
We provide sharp worst-case evaluation complexity bounds for nonconvex minimization problems with ge...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
Abstract It is well known that second-order information is a basic tool notably in optimality condit...
We establish or refute the optimality of inexact second-order methods for unconstrained nonconvex op...
Abstract. Necessary conditions for an abstract optimization problem are derived under weak assump-ti...
AbstractThis paper examines worst-case evaluation bounds for finding weak minimizers in unconstraine...
This is a short tutorial on complexity studies for differentiable convex optimization. A complexity ...