A novel derivative-free algorithm, called optimization by moving ridge functions (OMoRF), for unconstrained and bound-constrained optimization is presented. This algorithm couples trust region methodologies with output-based dimension reduction to accelerate convergence of model-based optimization strategies. The dimension-reducing subspace is updated as the trust region moves through the function domain, allowing OMoRF to be applied to functions with no known global low-dimensional structure. Furthermore, its low computational requirement allows it to make rapid progress when optimizing high-dimensional functions. Its performance is examined on a set of test problems of moderate to high dimension and a high-dimensional design optimization ...
We introduce a trust region algorithm for minimization of nonsmooth functions with linear constraint...
We introduce a trust region algorithm for minimization of nonsmooth functions with linear constraint...
Optimization problems with different levels arise by discretization of ordinary and partial differen...
Derivative free optimization algorithms are implementations of trust region based derivative-free me...
We propose a derivative-free trust region algorithm with a nonmonotone filter technique for bound co...
We introduce MNH, a new algorithm for unconstrained optimization when derivatives are unavailable, p...
We present an introduction to a new class of derivative free methods for unconstrained optimization....
We present an introduction to a new class of derivative free methods for unconstrained optimization....
Abstract: We introduce MNH, a new algorithm for unconstrained optimization when derivatives are un...
In this paper, we consider the unconstrained optimization problem under the following situation: (S1...
We introduce a trust region algorithm for minimization of nonsmooth functions with linear constraint...
AbstractWe present an algorithmic framework for unconstrained derivative-free optimization based on ...
We present trust-region methods for the general unconstrained minimization problem. Trust-region alg...
Optimization problems with different levels arise by discretization of ordinary and partial differen...
In this survey article we give the basic description of the interpolation based derivative free opti...
We introduce a trust region algorithm for minimization of nonsmooth functions with linear constraint...
We introduce a trust region algorithm for minimization of nonsmooth functions with linear constraint...
Optimization problems with different levels arise by discretization of ordinary and partial differen...
Derivative free optimization algorithms are implementations of trust region based derivative-free me...
We propose a derivative-free trust region algorithm with a nonmonotone filter technique for bound co...
We introduce MNH, a new algorithm for unconstrained optimization when derivatives are unavailable, p...
We present an introduction to a new class of derivative free methods for unconstrained optimization....
We present an introduction to a new class of derivative free methods for unconstrained optimization....
Abstract: We introduce MNH, a new algorithm for unconstrained optimization when derivatives are un...
In this paper, we consider the unconstrained optimization problem under the following situation: (S1...
We introduce a trust region algorithm for minimization of nonsmooth functions with linear constraint...
AbstractWe present an algorithmic framework for unconstrained derivative-free optimization based on ...
We present trust-region methods for the general unconstrained minimization problem. Trust-region alg...
Optimization problems with different levels arise by discretization of ordinary and partial differen...
In this survey article we give the basic description of the interpolation based derivative free opti...
We introduce a trust region algorithm for minimization of nonsmooth functions with linear constraint...
We introduce a trust region algorithm for minimization of nonsmooth functions with linear constraint...
Optimization problems with different levels arise by discretization of ordinary and partial differen...