This paper analyzes global convergence of the univariate dynamic encoding algorithm for searches (uDEAS) and provides an application result to function optimization. uDEAS is a more advanced optimization method than its predecessor in terms of the number of neighborhood points. This improvement should be validated through mathematical analysis for further research and application. Since uDEAS can be categorized into the generating set search method also established recently, the global convergence property of uDEAS is proved in the context of the direct search method. To show the strong performance of uDEAS, the global minima Of four 30 dimensional benchmark functions are attempted to be located by uDEAS and the other direct search methods....
This paper deals with two kinds of the one-dimensional global optimization problem over a closed fin...
The definition of pattern search methods for solving nonlinear unconstrained optimization problems i...
Abstract Extending the notion of global search to multiobjective optimization is far than straightfo...
. This paper gives a unifying, abstract generalization of pattern search methods for solving nonline...
This paper defines a class of evolutionary algorithms called evolutionary pattern search algorithms ...
The authors describe a convergence theory for evolutionary pattern search algorithms (EPSAs) on a br...
A direct search algorithm is proposed for minimizing an arbitrary real valued function. The algorith...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
. This paper presents the convergence analysis for the multidirectional search algorithm, a direct s...
Extending the notion of global search to multiobjective optimization is far than straightforward, ma...
The DIRECT (DIviding RECTangles) algorithm of Jones, Perttunen, and Stuckman (1993), a variant of Li...
This thesis addresses aspects of stochastic algorithms for the solution of global optimisation probl...
The authors present and analyze a class of evolutionary algorithms for unconstrained and bound const...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
Several types of line search methods are documented in the literature and are well known for unconst...
This paper deals with two kinds of the one-dimensional global optimization problem over a closed fin...
The definition of pattern search methods for solving nonlinear unconstrained optimization problems i...
Abstract Extending the notion of global search to multiobjective optimization is far than straightfo...
. This paper gives a unifying, abstract generalization of pattern search methods for solving nonline...
This paper defines a class of evolutionary algorithms called evolutionary pattern search algorithms ...
The authors describe a convergence theory for evolutionary pattern search algorithms (EPSAs) on a br...
A direct search algorithm is proposed for minimizing an arbitrary real valued function. The algorith...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
. This paper presents the convergence analysis for the multidirectional search algorithm, a direct s...
Extending the notion of global search to multiobjective optimization is far than straightforward, ma...
The DIRECT (DIviding RECTangles) algorithm of Jones, Perttunen, and Stuckman (1993), a variant of Li...
This thesis addresses aspects of stochastic algorithms for the solution of global optimisation probl...
The authors present and analyze a class of evolutionary algorithms for unconstrained and bound const...
This paper presents some simple technical conditions that guarantee the convergence of a general cla...
Several types of line search methods are documented in the literature and are well known for unconst...
This paper deals with two kinds of the one-dimensional global optimization problem over a closed fin...
The definition of pattern search methods for solving nonlinear unconstrained optimization problems i...
Abstract Extending the notion of global search to multiobjective optimization is far than straightfo...