Using fuzzy neighborhood relations in density-based clustering, like in Fuzzy Joint Points (FJP) algorithm, yields more robust and autonomous algorithms. Even though the fuzzy neighborhood based clustering methods are proven to be fast enough, such that tens of thousands of data can be handled under a second, the space complexity is still a limiting factor. In this study, a transformed HP algorithm with low space complexity is proposed
The present article considers the fuzzy joint points (FJP) method for the problem of fuzzy clusterin...
Data clustering is a fundamental problem arising in many practical applications. In this paper, we p...
The well-known fuzzy partition clustering algorithms are mainly based on Euclidean distance measure ...
Abstract. The main purpose of this paper is to achieve improvement in the speed of Fuzzy Joint Point...
The fuzzy joint points (FJP) method is one of the successful fuzzy approaches to density-based clust...
Cluster analysis is one of the most crucial techniques in statistical data analysis. Among the clust...
Fuzzy neighborhood-based clustering algorithms overcome the parameter selection problem of classical...
A new hierarchical approach to the problem of clustering, called the Fuzzy Joint Point, FJP) method ...
Day by day huge amounts data are produced, and evaluation of these data becomes more difficult. The ...
Integrating clustering algorithms with fuzzy logic typically yields more robust methods, which requi...
The aim of this paper has twofold: i) to explore the fundamental concepts and methods of neighborhoo...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
Methods like DBSCAN are widely used in the analysis of spatial data. These methods are based on the ...
Applying fuzzy logic to clustering techniques leads to more robust and autonomous methods like the f...
Clustering is a commonly used tool for data management and analysis. One of the prominent group of c...
The present article considers the fuzzy joint points (FJP) method for the problem of fuzzy clusterin...
Data clustering is a fundamental problem arising in many practical applications. In this paper, we p...
The well-known fuzzy partition clustering algorithms are mainly based on Euclidean distance measure ...
Abstract. The main purpose of this paper is to achieve improvement in the speed of Fuzzy Joint Point...
The fuzzy joint points (FJP) method is one of the successful fuzzy approaches to density-based clust...
Cluster analysis is one of the most crucial techniques in statistical data analysis. Among the clust...
Fuzzy neighborhood-based clustering algorithms overcome the parameter selection problem of classical...
A new hierarchical approach to the problem of clustering, called the Fuzzy Joint Point, FJP) method ...
Day by day huge amounts data are produced, and evaluation of these data becomes more difficult. The ...
Integrating clustering algorithms with fuzzy logic typically yields more robust methods, which requi...
The aim of this paper has twofold: i) to explore the fundamental concepts and methods of neighborhoo...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
Methods like DBSCAN are widely used in the analysis of spatial data. These methods are based on the ...
Applying fuzzy logic to clustering techniques leads to more robust and autonomous methods like the f...
Clustering is a commonly used tool for data management and analysis. One of the prominent group of c...
The present article considers the fuzzy joint points (FJP) method for the problem of fuzzy clusterin...
Data clustering is a fundamental problem arising in many practical applications. In this paper, we p...
The well-known fuzzy partition clustering algorithms are mainly based on Euclidean distance measure ...