Abstract. A challenge in hybrid evolutionary algorithms is to employ efficient strategies to cover all the search space, applying local search only in actually promising search areas; on the other hand, clustering algorithms, a fundamental base for data mining procedures and learning techniques, suffer from the lack of efficient methods for determining the optimal number of clusters to be found in an arbitrary dataset. Some existing methods use evolutionary algorithms with cluster val-idation index as the objective function. In this article, a new cellular evolutionary algorithm based on a hybrid model of global and local heuristic search is proposed for the same task, and extensive experimentation is done with different datasets and indexe...
Clustering techniques have received attention in many areas including engineering, medicine, biology...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
This paper presents a hybrid evolutionary algorithm (EA) to solve nonlinear-regression problems. Alt...
This paper pursues a course of investigation of an approach to combine Evolutionary Computation and ...
In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optimal partit...
Clustering is an unsupervised approach to extract hidden patterns from the datasets. There are certa...
This paper approaches a recent hybrid evolutionary algorithm, called Evolutionary Clustering Search ...
Estimating the optimal number of clusters for a dataset is one of the most essential issues in clust...
The aim of this paper is the combination of an Evolutionary Algorithm and a Data Mining technique fo...
In this paper, we propose a novel local search heuristic and then hybridize it with a genetic algori...
Abstract—In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optim...
This paper introduces a hybrid genetic algorithm that uses fuzzy c-means clustering technique as a m...
Clustering is a very well known technique in data mining. One of the most widely used clustering tec...
The K-means algorithm is one of the most popular techniques in clustering. Nevertheless, the perform...
Clustering techniques have received attention in many areas including engineering, medicine, biology...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...
This paper presents a hybrid evolutionary algorithm (EA) to solve nonlinear-regression problems. Alt...
This paper pursues a course of investigation of an approach to combine Evolutionary Computation and ...
In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optimal partit...
Clustering is an unsupervised approach to extract hidden patterns from the datasets. There are certa...
This paper approaches a recent hybrid evolutionary algorithm, called Evolutionary Clustering Search ...
Estimating the optimal number of clusters for a dataset is one of the most essential issues in clust...
The aim of this paper is the combination of an Evolutionary Algorithm and a Data Mining technique fo...
In this paper, we propose a novel local search heuristic and then hybridize it with a genetic algori...
Abstract—In this paper, we propose a novel hybrid genetic algorithm (GA) that finds a globally optim...
This paper introduces a hybrid genetic algorithm that uses fuzzy c-means clustering technique as a m...
Clustering is a very well known technique in data mining. One of the most widely used clustering tec...
The K-means algorithm is one of the most popular techniques in clustering. Nevertheless, the perform...
Clustering techniques have received attention in many areas including engineering, medicine, biology...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
Finding optimal clusterings is a difficult task. Most clustering methods require the number of clust...