AbstractSome methods of fuzzy clustering need to use a priori knowledge about the number of fuzzy classes or some other information about the possible distribution of the clusters. A way to improve these methods is to use hierarchical clustering as a preprocessing of the data. This approach does not provide a simple partition of the data set, but a hierarchy of them. In this paper we define several measures using fuzzy-set tools, to establish a ranking between the different possible partitions. The characteristics and properties of these criteria are studied. The paper finishes with some remarks about the use of these results in different unsupervised learning situations
Abstract — Clustering is a powerful technique of data mining for extracting useful information from ...
This paper presents the development, testing and evaluation of generalized Possibilistic fuzzy c-m...
This chapter provides a comprehensive, focused introduction to clustering, viewed as a fundamental m...
A fuzzy system entirely characterizes one region of the input-output product space S=U×Vthrough a ...
The objective of data mining is to take out information from large amounts of data and convert it in...
Cluster ensembles organically integrate individual component methods which may utilise different par...
The fuzzy c-means (FCM) clustering algorithm is the best known and used method in fuzzy clustering ...
In this paper we present a method to detect natural groups in a data set, based on hierarchical clus...
Abstract: Clustering is used to describe methods for grouping of unlabeled data. Clustering is an im...
The clustering results are analyzed by comparing two algorithms (SOM and FCM). The multidimensional...
During the last years, fuzzy and model-based approaches to clustering have received a great deal of ...
To build a fuzzy model, as proposed by Takagi and Sugeno (1985), the authors emphasize an interactiv...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
Abstract — In this article the issue of data based modeling is dealt with the help a network of unif...
This chapter presents a unified framework to generalize a number of fuzzy clustering algorithms to h...
Abstract — Clustering is a powerful technique of data mining for extracting useful information from ...
This paper presents the development, testing and evaluation of generalized Possibilistic fuzzy c-m...
This chapter provides a comprehensive, focused introduction to clustering, viewed as a fundamental m...
A fuzzy system entirely characterizes one region of the input-output product space S=U×Vthrough a ...
The objective of data mining is to take out information from large amounts of data and convert it in...
Cluster ensembles organically integrate individual component methods which may utilise different par...
The fuzzy c-means (FCM) clustering algorithm is the best known and used method in fuzzy clustering ...
In this paper we present a method to detect natural groups in a data set, based on hierarchical clus...
Abstract: Clustering is used to describe methods for grouping of unlabeled data. Clustering is an im...
The clustering results are analyzed by comparing two algorithms (SOM and FCM). The multidimensional...
During the last years, fuzzy and model-based approaches to clustering have received a great deal of ...
To build a fuzzy model, as proposed by Takagi and Sugeno (1985), the authors emphasize an interactiv...
In this paper, a new level-based (hierarchical) approach to the fuzzy clustering problem for spatial...
Abstract — In this article the issue of data based modeling is dealt with the help a network of unif...
This chapter presents a unified framework to generalize a number of fuzzy clustering algorithms to h...
Abstract — Clustering is a powerful technique of data mining for extracting useful information from ...
This paper presents the development, testing and evaluation of generalized Possibilistic fuzzy c-m...
This chapter provides a comprehensive, focused introduction to clustering, viewed as a fundamental m...