This article presents a newly proposed selection process for genetic algorithms on a class of unconstrained optimization problems. The k-means genetic algorithm selection process (KGA) is composed of four essential stages: clustering, membership phase, fitness scaling and selection. Inspired from the hypothesis that clustering the population helps to preserve a selection pressure throughout the evolution of the population, a membership probability index is assigned to each individual following the clustering phase. Fitness scaling converts the membership scores in a range suitable for the selection function which selects the parents of the next generation. Two versions of the KGA process are presented: using a fixed number of clusters K (KG...
The genetic algorithm of clustering of analysis objects in different data domains has been offered w...
This paper compares various selection techniques used in Genetic Algorithm. Genetic algorithms are o...
Genetic Algorithms are stochastic randomized procedures used to solve search and optimization proble...
This article presents a newly proposed selection process for genetic algorithms on a class of uncons...
Abstract: Problem statement: The selection process is a major factor in genetic algorithm which dete...
The K-means algorithm for clustering is very much dependent on the initial seed values. We use a gen...
In this article the performance of the genetic algorithm for solving some clustering problem is inve...
Abstract:- K-means algorithm is most widely used algorithm for unsupervised clustering problem. Thou...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optimal partit...
Summarization: This paper presents a new memetic algorithm, which is based on the concepts of geneti...
Cluster analysis aims at finding subsets (clusters) of a given set of entities, which are homogeneou...
Selection of initial points, the number of clusters and finding proper clusters centers are still th...
Abstract—In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optim...
This thesis presents an analysis of the selection process in tree-based Genetic Programming (GP), co...
The genetic algorithm of clustering of analysis objects in different data domains has been offered w...
This paper compares various selection techniques used in Genetic Algorithm. Genetic algorithms are o...
Genetic Algorithms are stochastic randomized procedures used to solve search and optimization proble...
This article presents a newly proposed selection process for genetic algorithms on a class of uncons...
Abstract: Problem statement: The selection process is a major factor in genetic algorithm which dete...
The K-means algorithm for clustering is very much dependent on the initial seed values. We use a gen...
In this article the performance of the genetic algorithm for solving some clustering problem is inve...
Abstract:- K-means algorithm is most widely used algorithm for unsupervised clustering problem. Thou...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optimal partit...
Summarization: This paper presents a new memetic algorithm, which is based on the concepts of geneti...
Cluster analysis aims at finding subsets (clusters) of a given set of entities, which are homogeneou...
Selection of initial points, the number of clusters and finding proper clusters centers are still th...
Abstract—In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optim...
This thesis presents an analysis of the selection process in tree-based Genetic Programming (GP), co...
The genetic algorithm of clustering of analysis objects in different data domains has been offered w...
This paper compares various selection techniques used in Genetic Algorithm. Genetic algorithms are o...
Genetic Algorithms are stochastic randomized procedures used to solve search and optimization proble...