This paper is concerned with the computational efficiency of clustering algorithms when the data set to be clustered is described by a proximity matrix only (relational data) and the number of clusters must be automatically estimated from such data. Two relational versions of an evolutionary algorithm for clustering are derived and compared against two systematic (pseudo-exhaustive) approaches that can also be used to automatically estimate the number of clusters in relational data. The computational complexities of the algorithms are discussed and an extensive collection of experiments involving 18 artificial and two real data sets is reported and analyzed
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Two types of data are used in pattern recognition, object and relational data. Object data is the mo...
This paper elaborates on the improvement of an evolutionary algorithm for clustering (EAC) introduce...
This paper is concerned with the computational efficiency of clustering algorithms when the data set...
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...
Dynamic Aggregation of Relational Attributes is one of the approaches which can be used to learn rel...
Problem statement: In solving a classification problem in relational data mining, traditional method...
Abstract. The determination of the number of groups in a dataset, their composition and the most rel...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
The determination of the number of groups in a dataset, theircomposition and the most relevant measu...
The determination of the number of groups in a dataset, theircomposition and the most relevant measu...
This dissertation focuses on the topic of relational data clustering, which is the task of organizin...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
In this paper a genetic algorithm for clustering is proposed. The algorithm is based on the variable...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Two types of data are used in pattern recognition, object and relational data. Object data is the mo...
This paper elaborates on the improvement of an evolutionary algorithm for clustering (EAC) introduce...
This paper is concerned with the computational efficiency of clustering algorithms when the data set...
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...
Dynamic Aggregation of Relational Attributes is one of the approaches which can be used to learn rel...
Problem statement: In solving a classification problem in relational data mining, traditional method...
Abstract. The determination of the number of groups in a dataset, their composition and the most rel...
This paper presents a survey of evolutionary algorithms designed for clustering tasks. It tries to r...
The determination of the number of groups in a dataset, theircomposition and the most relevant measu...
The determination of the number of groups in a dataset, theircomposition and the most relevant measu...
This dissertation focuses on the topic of relational data clustering, which is the task of organizin...
In this paper, an evolutionary programming-based clustering algorithm is proposed. The algorithm eff...
In this paper a genetic algorithm for clustering is proposed. The algorithm is based on the variable...
Data clustering consists in finding homogeneous groups in a dataset. The importance attributed to cl...
Two types of data are used in pattern recognition, object and relational data. Object data is the mo...
This paper elaborates on the improvement of an evolutionary algorithm for clustering (EAC) introduce...