The optimal number of clusters is one of the main concerns when applying cluster analysis. Several cluster validity indexes have been introduced to address this problem. However, in some situations, there is more than one option that can be chosen as the final number of clusters. This aspect has been overlooked by most of the existing works in this area. In this study, we introduce a correlation-based fuzzy cluster validity index known as the Wiroonsri-Preedasawakul (WP) index. This index is defined based on the correlation between the actual distance between a pair of data points and the distance between adjusted centroids with respect to that pair. We evaluate and compare the performance of our index with several existing indexes, includi...
2017 International Artificial Intelligence and Data Processing Symposium, IDAP 2017 --16 September 2...
Clustering can be defined as the process of grouping physical or abstract objects into classes of si...
Previously, eight popular information-theoretic based cluster validity indices have been generalized...
There are various cluster validity indices used for evaluating clustering results. One of the main o...
Finding the optimal cluster number and validating the partition resultsof a data set are difficult t...
Cluster analysis is an important tool in the exploration of large collections of data, revealing pat...
Two well-known drawbacks in fuzzy clustering are the requirement of assigning in advance the number...
Cluster analysis is a multivariate statistical classification method, implying different methods and...
Abstract An improved cluster validity index for fuzzy clustering that is able to overcome three intr...
A parameter specifying the number of clusters in an unsupervised clustering algorithm is often unkno...
Cluster validation is a major issue in cluster analysis. Many existing validity indices do not perfo...
Since clustering is an unsupervised method and there is no a-priori indication for the actual number...
Fuzzy clustering is useful to mine complex and multi-dimensional datasets, where the members have pa...
A hard partition clustering algorithm assigns equally distant points to one of the clusters, where e...
Because traditional fuzzy clustering validity indices need to specify the number of clusters and are...
2017 International Artificial Intelligence and Data Processing Symposium, IDAP 2017 --16 September 2...
Clustering can be defined as the process of grouping physical or abstract objects into classes of si...
Previously, eight popular information-theoretic based cluster validity indices have been generalized...
There are various cluster validity indices used for evaluating clustering results. One of the main o...
Finding the optimal cluster number and validating the partition resultsof a data set are difficult t...
Cluster analysis is an important tool in the exploration of large collections of data, revealing pat...
Two well-known drawbacks in fuzzy clustering are the requirement of assigning in advance the number...
Cluster analysis is a multivariate statistical classification method, implying different methods and...
Abstract An improved cluster validity index for fuzzy clustering that is able to overcome three intr...
A parameter specifying the number of clusters in an unsupervised clustering algorithm is often unkno...
Cluster validation is a major issue in cluster analysis. Many existing validity indices do not perfo...
Since clustering is an unsupervised method and there is no a-priori indication for the actual number...
Fuzzy clustering is useful to mine complex and multi-dimensional datasets, where the members have pa...
A hard partition clustering algorithm assigns equally distant points to one of the clusters, where e...
Because traditional fuzzy clustering validity indices need to specify the number of clusters and are...
2017 International Artificial Intelligence and Data Processing Symposium, IDAP 2017 --16 September 2...
Clustering can be defined as the process of grouping physical or abstract objects into classes of si...
Previously, eight popular information-theoretic based cluster validity indices have been generalized...