This paper presents two different efficiency-enhancement techniques for probabilistic model building genetic algorithms. The first technique proposes the use of a mutation operator which performs local search in the sub-solution neighborhood identified through the probabilistic model. The second technique proposes building and using an internal probabilistic model of the fitness along with the probabilistic model of variable interactions. The fitness values of some offspring are estimated using the probabilistic model, thereby avoiding computationally expensive function evaluations. The scalability of the aforementioned techniques are analyzed using facetwise models for convergence time and population sizing. The speed-up obtained by each o...
A wide range of niching techniques have been investigated in evolutionary and genetic algorithms. In...
This paper introduces a Markov model for evolutionary algorithms (EAs) that is based on interactions...
In this paper we describe an efficient approach for multimodal function optimization using Genetic A...
This paper presents a competent selectomutative genetic algorithm (GA), that adapts linkage and solv...
This paper studies fitness inheritance as an efficiency enhancement technique for a class of compete...
fpelikandeglobogilligalgeuiucedu This paper summarizes the research on populationbased probabilistic...
Efficiency enhancement techniques—such as parallelization and hybridization—are among the most impor...
Abstract—Evolutionary algorithms are global optimization methods that have been used in many real-wo...
We shortly review our theoretical analysis of genetic algorithms and provide some new results. The t...
The probabilistic model building performed by estimation of distribution algorithms (EDAs) enables t...
Abstract. Recently, there has been a growing interest in developing evolutionary algorithms based on...
One benefit of using probabilistic model-building genetic algorithms is the possibility of creating ...
AbstractThis paper presents stochastic models for two classes of Genetic Algorithms. We present impo...
Markov networks and other probabilistic graphical modes have recently received an upsurge in attenti...
As practitioners we are interested in the likelihood of the population containing a copy of the opti...
A wide range of niching techniques have been investigated in evolutionary and genetic algorithms. In...
This paper introduces a Markov model for evolutionary algorithms (EAs) that is based on interactions...
In this paper we describe an efficient approach for multimodal function optimization using Genetic A...
This paper presents a competent selectomutative genetic algorithm (GA), that adapts linkage and solv...
This paper studies fitness inheritance as an efficiency enhancement technique for a class of compete...
fpelikandeglobogilligalgeuiucedu This paper summarizes the research on populationbased probabilistic...
Efficiency enhancement techniques—such as parallelization and hybridization—are among the most impor...
Abstract—Evolutionary algorithms are global optimization methods that have been used in many real-wo...
We shortly review our theoretical analysis of genetic algorithms and provide some new results. The t...
The probabilistic model building performed by estimation of distribution algorithms (EDAs) enables t...
Abstract. Recently, there has been a growing interest in developing evolutionary algorithms based on...
One benefit of using probabilistic model-building genetic algorithms is the possibility of creating ...
AbstractThis paper presents stochastic models for two classes of Genetic Algorithms. We present impo...
Markov networks and other probabilistic graphical modes have recently received an upsurge in attenti...
As practitioners we are interested in the likelihood of the population containing a copy of the opti...
A wide range of niching techniques have been investigated in evolutionary and genetic algorithms. In...
This paper introduces a Markov model for evolutionary algorithms (EAs) that is based on interactions...
In this paper we describe an efficient approach for multimodal function optimization using Genetic A...