Abstract: The K-means algorithm is a popular data-clustering algorithm. However, one of its drawbacks is the requirement for the number of clusters, K, to be specified before the algorithm is applied. This paper first reviews existing methods for selecting the number of clusters for the algorithm. Factors that affect this selection are then discussed and a new measure to assist the selection is proposed. The paper concludes with an analysis of the results of using the proposed measure to determine the number of clusters for the K-means algorithm for different data sets
Working with huge amount of data and learning from it by extracting useful information is one of the...
Abstract — Clustering is the most important unsupervised learning technique of organizing objects in...
The issue of determining “the right number of clusters” in K-Means has attracted considerable intere...
Data clustering is a data exploration technique that allows objects with similar characteristics to ...
Data clustering is a data exploration technique that allows objects with similar characteristics to ...
When clustering a dataset, the right number k of clusters to use is often not obvious, and choosing...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
Abstract: Clustering is a well known data mining technique which is used to group together data item...
K-means clustering algorithm which is a process of separating n number of points into K clusters acc...
###EgeUn###K-means clustering algorithm which is a process of separating n number of points into K c...
Partitioning data into a finite number of k homogenous and separate clusters (groups) without use of...
One of the most important problems in cluster analysis is the selection of variables that truly defi...
Cluster analysis method is one of the most analytical methods of data mining. The method will direct...
11th IEEE International Conference on Application of Information and Communication Technologies (AIC...
This paper presents a comprehensive review of existing techniques of k-means clustering algorithms m...
Working with huge amount of data and learning from it by extracting useful information is one of the...
Abstract — Clustering is the most important unsupervised learning technique of organizing objects in...
The issue of determining “the right number of clusters” in K-Means has attracted considerable intere...
Data clustering is a data exploration technique that allows objects with similar characteristics to ...
Data clustering is a data exploration technique that allows objects with similar characteristics to ...
When clustering a dataset, the right number k of clusters to use is often not obvious, and choosing...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
Abstract: Clustering is a well known data mining technique which is used to group together data item...
K-means clustering algorithm which is a process of separating n number of points into K clusters acc...
###EgeUn###K-means clustering algorithm which is a process of separating n number of points into K c...
Partitioning data into a finite number of k homogenous and separate clusters (groups) without use of...
One of the most important problems in cluster analysis is the selection of variables that truly defi...
Cluster analysis method is one of the most analytical methods of data mining. The method will direct...
11th IEEE International Conference on Application of Information and Communication Technologies (AIC...
This paper presents a comprehensive review of existing techniques of k-means clustering algorithms m...
Working with huge amount of data and learning from it by extracting useful information is one of the...
Abstract — Clustering is the most important unsupervised learning technique of organizing objects in...
The issue of determining “the right number of clusters” in K-Means has attracted considerable intere...