Clustering performance of the K-means highly depends on the correctness of initial centroids. Usually initial centroids for the K- means clustering are determined randomly so that the determined initial centers may cause to reach the nearest local minima, not the global optimum. In this paper, we propose an algorithm, called as Centronit, for designation of initial centroid optimization of K-means clustering. The proposed algorithm is based on the calculation of the average distance of the nearest data inside region of the minimum distance. The initial centroids can be designated by the lowest average distance of each data. The minimum distance is set by calculating the average distance between the data. This method is also robust from outl...
Abstract—In k-means clustering algorithm, the number of centroids is equal to the number of the clus...
The k-means clustering algorithm, whilst widely popular, is not without its drawbacks. In this paper...
Partition-based clustering technique is one of several clustering techniques that attempt to directl...
Clustering performance of the K-means highly depends on the correctness of initial centroids. Usuall...
K-means algorithm is very sensitive in initial starting points. Because of initial starting points g...
Clustering is a grouping of data used in data mining processing. K-means is one of the popular clust...
In this paper, the standard k-means algorithm has been improved in terms of the initial cluster cent...
Abstract — Clustering is the most important unsupervised learning technique of organizing objects in...
Abstract: Initial starting points those generated randomly by K-means often make the clustering resu...
K-means is one of the simplest unsupervised learning algorithms that solve the well known clustering...
Abstract — The famous K-means clustering algorithm is sensitive to the selection of the initial cent...
The famous K-means clustering algorithm is sensitive to the selection of the initial centroids and m...
Cluster analysis or clustering is the task of grouping a set of objects in such a way that objects i...
Abstract- Clustering is one of the Data Mining tasks that can be used to cluster or group objects on...
Clustering is a technique in data mining which divides given data set into small clusters based on t...
Abstract—In k-means clustering algorithm, the number of centroids is equal to the number of the clus...
The k-means clustering algorithm, whilst widely popular, is not without its drawbacks. In this paper...
Partition-based clustering technique is one of several clustering techniques that attempt to directl...
Clustering performance of the K-means highly depends on the correctness of initial centroids. Usuall...
K-means algorithm is very sensitive in initial starting points. Because of initial starting points g...
Clustering is a grouping of data used in data mining processing. K-means is one of the popular clust...
In this paper, the standard k-means algorithm has been improved in terms of the initial cluster cent...
Abstract — Clustering is the most important unsupervised learning technique of organizing objects in...
Abstract: Initial starting points those generated randomly by K-means often make the clustering resu...
K-means is one of the simplest unsupervised learning algorithms that solve the well known clustering...
Abstract — The famous K-means clustering algorithm is sensitive to the selection of the initial cent...
The famous K-means clustering algorithm is sensitive to the selection of the initial centroids and m...
Cluster analysis or clustering is the task of grouping a set of objects in such a way that objects i...
Abstract- Clustering is one of the Data Mining tasks that can be used to cluster or group objects on...
Clustering is a technique in data mining which divides given data set into small clusters based on t...
Abstract—In k-means clustering algorithm, the number of centroids is equal to the number of the clus...
The k-means clustering algorithm, whilst widely popular, is not without its drawbacks. In this paper...
Partition-based clustering technique is one of several clustering techniques that attempt to directl...