This paper tackles the problem of showing that evolutionary algorithms for fuzzy clustering can be more efficient than systematic (i.e. repetitive) approaches when the number of clusters in a data set is unknown. To do so, a fuzzy version of an Evolutionary Algorithm for Clustering (EAC) is introduced. A fuzzy cluster validity criterion and a fuzzy local search algorithm are used instead of their hard counterparts employed by EAC. Theoretical complexity analyses for both the systematic and evolutionary algorithms under interest are provided. Examples with computational experiments and statistical analyses are also presented
International audienceThis paper applies the Differential Evolution (DE) and Genetic Algorithm (GA) ...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
Copyright © 2014 S. Salcedo-Sanz et al.This is an open access article distributed under the Creative...
This paper tackles the problem of showing that evolutionary algorithms for fuzzy clustering can be m...
A fuzzy version of an Evolutionary Algorithm for Clustering (EAC) proposed in, previous work is intr...
This paper is concerned with the computational efficiency of fuzzy clustering algorithms when the da...
AbstractThis paper is concerned with the computational efficiency of fuzzy clustering algorithms whe...
This paper elaborates on the improvement of an evolutionary algorithm for clustering (EAC) introduce...
Clustering (or cluster analysis) aims toorganize a collection of data items into clusters,such that ...
This paper introduces an evolutionary approach to automatically determine the optimal number and loc...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
Evolutionary algorithms (EAs) are random search heuristics which can solve various optimization prob...
One of the top ten most influential data mining algorithms, k-means, is known for being simple and s...
This paper presents a novel fuzzy clustering technique based on grouping genetic algorithms (GGAs), ...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
International audienceThis paper applies the Differential Evolution (DE) and Genetic Algorithm (GA) ...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
Copyright © 2014 S. Salcedo-Sanz et al.This is an open access article distributed under the Creative...
This paper tackles the problem of showing that evolutionary algorithms for fuzzy clustering can be m...
A fuzzy version of an Evolutionary Algorithm for Clustering (EAC) proposed in, previous work is intr...
This paper is concerned with the computational efficiency of fuzzy clustering algorithms when the da...
AbstractThis paper is concerned with the computational efficiency of fuzzy clustering algorithms whe...
This paper elaborates on the improvement of an evolutionary algorithm for clustering (EAC) introduce...
Clustering (or cluster analysis) aims toorganize a collection of data items into clusters,such that ...
This paper introduces an evolutionary approach to automatically determine the optimal number and loc...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
Evolutionary algorithms (EAs) are random search heuristics which can solve various optimization prob...
One of the top ten most influential data mining algorithms, k-means, is known for being simple and s...
This paper presents a novel fuzzy clustering technique based on grouping genetic algorithms (GGAs), ...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
International audienceThis paper applies the Differential Evolution (DE) and Genetic Algorithm (GA) ...
Two new algorithms for fuzzy clustering are presented. Convergence of the proposed algorithms is pro...
Copyright © 2014 S. Salcedo-Sanz et al.This is an open access article distributed under the Creative...