AbstractA new algorithm for unconstrained optimization is presented which is based on a modified one-dimensional bisection method. The algorithm actually uses only the signs of function and gradient values. Thus it can be applied to problems with imprecise function and gradient values. It converges in one iteration on quadratic functions ofnvariables, it rapidly minimizes general functions and it does not require evaluation or estimation of the matrix of second partial derivatives. The algorithm has been implemented and tested. Performance information for well-known test functions is reported
AbstractA new algorithm for unconstrained minimization is presented which is based on a conic model....
AbstractIn this paper the development, convergence theory and numerical testing of a class of gradie...
A gradient-secant algorithm for unconstrained optimization problems is presented. The algorithm uses...
AbstractA new algorithm for unconstrained optimization is presented which is based on a modified one...
AbstractA new method for unconstrained optimization in Rn is presented. This method reduces the dime...
A tolerant derivative-free nonmonotone line-search technique is proposed and analyzed. Several conse...
Finding the unconstrained minimizer of a function of more than one variable is an important problem ...
A new accelerated gradient method for finding the minimum of a function f(x) whose variables are unc...
A new accelerated gradient method for finding the minimum of a function f(x) whose variables are unc...
A derivative free frame based method for minimizing~$C^1$ and non-smooth functions is described. A ...
A new method for unconstrained optimization is presented. It consists of a modification of Powell's...
We begin by developing a line search method for unconstrained optimization which can be regarded as ...
AbstractA very simple gradient only algorithm for unconstrained minimization is proposed that, in te...
AbstractBy the use of a nonlinear model for the gradient of the objective function along a chosen di...
The conjugate gradient method provides a very powerful tool for solving unconstrained optimization p...
AbstractA new algorithm for unconstrained minimization is presented which is based on a conic model....
AbstractIn this paper the development, convergence theory and numerical testing of a class of gradie...
A gradient-secant algorithm for unconstrained optimization problems is presented. The algorithm uses...
AbstractA new algorithm for unconstrained optimization is presented which is based on a modified one...
AbstractA new method for unconstrained optimization in Rn is presented. This method reduces the dime...
A tolerant derivative-free nonmonotone line-search technique is proposed and analyzed. Several conse...
Finding the unconstrained minimizer of a function of more than one variable is an important problem ...
A new accelerated gradient method for finding the minimum of a function f(x) whose variables are unc...
A new accelerated gradient method for finding the minimum of a function f(x) whose variables are unc...
A derivative free frame based method for minimizing~$C^1$ and non-smooth functions is described. A ...
A new method for unconstrained optimization is presented. It consists of a modification of Powell's...
We begin by developing a line search method for unconstrained optimization which can be regarded as ...
AbstractA very simple gradient only algorithm for unconstrained minimization is proposed that, in te...
AbstractBy the use of a nonlinear model for the gradient of the objective function along a chosen di...
The conjugate gradient method provides a very powerful tool for solving unconstrained optimization p...
AbstractA new algorithm for unconstrained minimization is presented which is based on a conic model....
AbstractIn this paper the development, convergence theory and numerical testing of a class of gradie...
A gradient-secant algorithm for unconstrained optimization problems is presented. The algorithm uses...