Optimization problems represent a class of pervasive and complex tasks in Computer Science, aimed at identifying the global optimum of a given objective function. Optimization problems are typically noisy, multi-modal, non-convex, non-separable, and often non-differentiable. Because of these features, they mandate the use of sophisticated population-based meta-heuristics to effectively explore the search space. Additionally, computational techniques based on the manipulation of the optimization landscape, such as Dilation Functions (DFs), can be effectively exploited to either “compress” or “dilate” some target regions of the search space, in order to improve the exploration and exploitation capabilities of any meta-heuristic. The main limi...
Particle swarm optimization (PSO) algorithms are now being practiced for more than a decade and have...
A global optimization framework, COMBEO (Change Of Measure Based Evolutionary Optimization), is prop...
The vast majority of real-world problems can be expressed as an optimisation task by formulating an ...
Optimization problems represent a class of pervasive and complex tasks in Computer Science, aimed at...
Complex tasks in Computer Science can be reformulated as optimization problems, in which the global ...
Several optimization problems have features that hinder the capabilities of searching heuristics. To...
Programs that work very well in optimizing convex functions very often perform poorly when the probl...
I. Introduction: Global optimization endeavors to find the optima of the functions that are non-lin...
Properly configuring Evolutionary Algorithms (EAs) is a challenging task made difficult by many diff...
Metaheuristic algorithms are often applied to global function optimization problems. To overcome the...
Discovering and utilizing problem domain knowledge is a promising direction towards improving the ef...
Solving optimization problems is one of the most complex and widespread task in Computer Science. In...
The problem of effectively and effciently finding the global optimum of a function by using evolutio...
Solving optimization problems is one of the most complex and widespread task in Computer Science. In...
This book presents powerful techniques for solving global optimization problems on manifolds by mean...
Particle swarm optimization (PSO) algorithms are now being practiced for more than a decade and have...
A global optimization framework, COMBEO (Change Of Measure Based Evolutionary Optimization), is prop...
The vast majority of real-world problems can be expressed as an optimisation task by formulating an ...
Optimization problems represent a class of pervasive and complex tasks in Computer Science, aimed at...
Complex tasks in Computer Science can be reformulated as optimization problems, in which the global ...
Several optimization problems have features that hinder the capabilities of searching heuristics. To...
Programs that work very well in optimizing convex functions very often perform poorly when the probl...
I. Introduction: Global optimization endeavors to find the optima of the functions that are non-lin...
Properly configuring Evolutionary Algorithms (EAs) is a challenging task made difficult by many diff...
Metaheuristic algorithms are often applied to global function optimization problems. To overcome the...
Discovering and utilizing problem domain knowledge is a promising direction towards improving the ef...
Solving optimization problems is one of the most complex and widespread task in Computer Science. In...
The problem of effectively and effciently finding the global optimum of a function by using evolutio...
Solving optimization problems is one of the most complex and widespread task in Computer Science. In...
This book presents powerful techniques for solving global optimization problems on manifolds by mean...
Particle swarm optimization (PSO) algorithms are now being practiced for more than a decade and have...
A global optimization framework, COMBEO (Change Of Measure Based Evolutionary Optimization), is prop...
The vast majority of real-world problems can be expressed as an optimisation task by formulating an ...