Fuzzy clustering is useful to mine complex and multi-dimensional datasets, where the members have partial or fuzzy relations. The procedure of evaluating the results of a fuzzy clustering algorithm is known under the term cluster validity. There are three principal approaches to investigate cluster validity: external, internal and relative criteria (Theodoridis and Koutroubas, 1999). These methods give an indication of the quality of the resulting partitioning and, so, they can be considered as an instrument available to experts in order to assess the results of fuzzy clustering. In this work we apply some indexes to evaluate the quality of the results obtained from a case study
Many different relative clustering validity criteria exist that are very useful in practice as quant...
Because traditional fuzzy clustering validity indices need to specify the number of clusters and are...
Clustering quality or validation indices allow the evaluation of the quality of clustering in order ...
Fuzzy clustering is useful to mine complex and multi-dimensional datasets, where the members have pa...
Since clustering is an unsupervised method and there is no a-priori indication for the actual number...
Cluster validation is a major issue in cluster analysis. Many existing validity indices do not perfo...
Clustering can be defined as the process of grouping physical or abstract objects into classes of si...
Cluster analysis is an important tool in the exploration of large collections of data, revealing pat...
Abstract An improved cluster validity index for fuzzy clustering that is able to overcome three intr...
Cluster analysis is a multivariate statistical classification method, implying different methods and...
Abstract:- Clustering is a process of discovering groups of objects such that the objects of the sam...
AbstractIn this paper, we define a validity measure for fuzzy criterion clustering which is a novel ...
Many different relative clustering validity criteria exist that are very useful in practice as quant...
Abstract: Finding the optimal cluster number and validating the partition results of a data set are ...
Abstract—Identification of correct number of clusters and the corresponding partitioning are two imp...
Many different relative clustering validity criteria exist that are very useful in practice as quant...
Because traditional fuzzy clustering validity indices need to specify the number of clusters and are...
Clustering quality or validation indices allow the evaluation of the quality of clustering in order ...
Fuzzy clustering is useful to mine complex and multi-dimensional datasets, where the members have pa...
Since clustering is an unsupervised method and there is no a-priori indication for the actual number...
Cluster validation is a major issue in cluster analysis. Many existing validity indices do not perfo...
Clustering can be defined as the process of grouping physical or abstract objects into classes of si...
Cluster analysis is an important tool in the exploration of large collections of data, revealing pat...
Abstract An improved cluster validity index for fuzzy clustering that is able to overcome three intr...
Cluster analysis is a multivariate statistical classification method, implying different methods and...
Abstract:- Clustering is a process of discovering groups of objects such that the objects of the sam...
AbstractIn this paper, we define a validity measure for fuzzy criterion clustering which is a novel ...
Many different relative clustering validity criteria exist that are very useful in practice as quant...
Abstract: Finding the optimal cluster number and validating the partition results of a data set are ...
Abstract—Identification of correct number of clusters and the corresponding partitioning are two imp...
Many different relative clustering validity criteria exist that are very useful in practice as quant...
Because traditional fuzzy clustering validity indices need to specify the number of clusters and are...
Clustering quality or validation indices allow the evaluation of the quality of clustering in order ...