In cluster analysis, finding out the number of clusters, K, for a given dataset is an important yet very tricky task, simply because there is often no universally accepted correct or wrong answer for non-trivial real world problems and it also depends on the context and purpose of a cluster study. This paper presents a new hybrid method for estimating the predominant number of clusters automatically. It employs a new similarity measure and then calculates the length of constant similarity intervals, L and considers the longest consistent intervals representing the most probable numbers of the clusters under the set context. An error function is defined to measure and evaluate the goodness of estimations. The proposed method has been tested ...
Data mining involves searching for certain patterns and facts about the structure of data within lar...
To estimated the optimal number of clusters and evaluate the associated quality of the formed cluste...
Clustering is an unsupervised learning technique which aims at grouping a set of objects into cluste...
In cluster analysis, finding out the number of clusters, K, for a given dataset is an important yet ...
This presentation proposes a maximum clustering similarity (MCS) method for determining the number o...
In cluster analysis, identifying the number of clusters in a dataset is one of the most important pr...
Cluster analysis is a field of study where the aim is to discover distinct groups or clusters in a d...
Clustering analysis seeks to partition a given dataset into groups or clusters so that the data obje...
Cluster Analytics helps to analyze the massive amounts of data which have accrued in this technologi...
In this technological age, vast amounts of data are generated. Vari-ous statistical methods are used...
Abstract: A fundamental and difficult problem in cluster analysis is the determination of the “true...
AbstractDetermining number of clusters present in a data set is an important problem in cluster anal...
3We propose a tool for exploring the number of clusters based on pivotal methods and consensus clust...
The issue of determining “the right number of clusters” in K-Means has attracted considerable intere...
This research estimates the optimal number of clusters in a dataset using a novel ensemble technique...
Data mining involves searching for certain patterns and facts about the structure of data within lar...
To estimated the optimal number of clusters and evaluate the associated quality of the formed cluste...
Clustering is an unsupervised learning technique which aims at grouping a set of objects into cluste...
In cluster analysis, finding out the number of clusters, K, for a given dataset is an important yet ...
This presentation proposes a maximum clustering similarity (MCS) method for determining the number o...
In cluster analysis, identifying the number of clusters in a dataset is one of the most important pr...
Cluster analysis is a field of study where the aim is to discover distinct groups or clusters in a d...
Clustering analysis seeks to partition a given dataset into groups or clusters so that the data obje...
Cluster Analytics helps to analyze the massive amounts of data which have accrued in this technologi...
In this technological age, vast amounts of data are generated. Vari-ous statistical methods are used...
Abstract: A fundamental and difficult problem in cluster analysis is the determination of the “true...
AbstractDetermining number of clusters present in a data set is an important problem in cluster anal...
3We propose a tool for exploring the number of clusters based on pivotal methods and consensus clust...
The issue of determining “the right number of clusters” in K-Means has attracted considerable intere...
This research estimates the optimal number of clusters in a dataset using a novel ensemble technique...
Data mining involves searching for certain patterns and facts about the structure of data within lar...
To estimated the optimal number of clusters and evaluate the associated quality of the formed cluste...
Clustering is an unsupervised learning technique which aims at grouping a set of objects into cluste...