The global optimization of a mathematical model determines the best parameters such that a target or cost function is minimized. Optimization problems arise in almost all scientific disciplines (operations research, life sciences, etc.). Only in a few exceptional cases, these problems can be solved analytically-exactly, so in practice numerical routines based on approximations have to be used. The routines return a result - a so-called candidate of a global minimum. Unfortunately, the question whether the candidate represents the optimal solution, often remains unanswered. This article presents a simple-to-use, statistical analysis that determines and assesses the quality of such a result. This information is valuable and important - especi...
AbstractMany statistical computations need a minimization method which can find global minima of a n...
This self-contained text provides a solid introduction to global and nonlinear optimization, providi...
Current research results in stochastic and deterministic global optimization including single and mu...
The global optimization of a mathematical model determines the best parameters such that a target or...
The global optimization of a mathematical model determines the best parameters such that a target or...
The objective of global optimization is to find the globally best solution of a model. Nonlinear mod...
Stochastic global optimization methods are methods for solving a global optimization prob-lem incorp...
The interface between computer science and operations research has drawn much attention recently esp...
We consider a variety of issues that arise when designing and analyzing computational experiments fo...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...
A stochastic method for global optimization is described and evaluated. The method involves a combin...
Optimization problems abound in most fields of science, engineering, and technology. In many of thes...
Many statistical methods rely on numerical optimization to estimate a model\u27s parameters. Unfortu...
Master’s thesis deals with numerical finding the global minimum. A theoretical part of project prese...
An Alternating Intensification/Diversification (AID) method is proposed to tackle global optimizatio...
AbstractMany statistical computations need a minimization method which can find global minima of a n...
This self-contained text provides a solid introduction to global and nonlinear optimization, providi...
Current research results in stochastic and deterministic global optimization including single and mu...
The global optimization of a mathematical model determines the best parameters such that a target or...
The global optimization of a mathematical model determines the best parameters such that a target or...
The objective of global optimization is to find the globally best solution of a model. Nonlinear mod...
Stochastic global optimization methods are methods for solving a global optimization prob-lem incorp...
The interface between computer science and operations research has drawn much attention recently esp...
We consider a variety of issues that arise when designing and analyzing computational experiments fo...
This thesis looks at some theoretical and practical aspects of global optimization - as we shall see...
A stochastic method for global optimization is described and evaluated. The method involves a combin...
Optimization problems abound in most fields of science, engineering, and technology. In many of thes...
Many statistical methods rely on numerical optimization to estimate a model\u27s parameters. Unfortu...
Master’s thesis deals with numerical finding the global minimum. A theoretical part of project prese...
An Alternating Intensification/Diversification (AID) method is proposed to tackle global optimizatio...
AbstractMany statistical computations need a minimization method which can find global minima of a n...
This self-contained text provides a solid introduction to global and nonlinear optimization, providi...
Current research results in stochastic and deterministic global optimization including single and mu...