Traditional k-means and most k-means variants are still computationally expensive for large datasets, such as microarray data, which have large datasets with large dimension size d. In k-means clustering, we are given a set of n data points in d-dimensional space R(d) and an integer k. The problem is to determine a set of k points in R(d), called centers, so as to minimize the mean squared distance from each data point to its nearest center. In this work, we develop a novel k-means algorithm, which is simple but more efficient than the traditional k-means and the recent enhanced k-means. Our new algorithm is based on the recently established relationship between principal component analysis and the k-means clustering. We provided the correc...
Probably the most famous clustering formulation is k-means. This is the focus today. Note: k-means i...
The popular k-means algorithm is used to discover clusters in vector data automatically. We present ...
AbstractIn this paper we combine the largest minimum distance algorithm and the traditional K-Means ...
<div><p>Traditional k-means and most k-means variants are still computationally expensive for large ...
The K-means clustering algorithm is an old algorithm that has been intensely researched owing to its...
K-means clustering is a very popular clustering technique, which is used in numerous applications. ...
Cluster analysis method is one of the most analytical methods of data mining. The method will direct...
AbstractÐIn k-means clustering, we are given a set of n data points in d-dimensional space Rd and an...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
huge data is a big challenge. Clustering technique is able to find hidden patterns and to extract us...
Since data analysis using technical computational model has profound influence on interpretation of ...
Data mining technique used in the field of clustering is a subject of active research and assists in...
In this paper, the standard k-means algorithm has been improved in terms of the initial cluster cent...
Abstract: Clustering is a well known data mining technique which is used to group together data item...
Working with huge amount of data and learning from it by extracting useful information is one of the...
Probably the most famous clustering formulation is k-means. This is the focus today. Note: k-means i...
The popular k-means algorithm is used to discover clusters in vector data automatically. We present ...
AbstractIn this paper we combine the largest minimum distance algorithm and the traditional K-Means ...
<div><p>Traditional k-means and most k-means variants are still computationally expensive for large ...
The K-means clustering algorithm is an old algorithm that has been intensely researched owing to its...
K-means clustering is a very popular clustering technique, which is used in numerous applications. ...
Cluster analysis method is one of the most analytical methods of data mining. The method will direct...
AbstractÐIn k-means clustering, we are given a set of n data points in d-dimensional space Rd and an...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
huge data is a big challenge. Clustering technique is able to find hidden patterns and to extract us...
Since data analysis using technical computational model has profound influence on interpretation of ...
Data mining technique used in the field of clustering is a subject of active research and assists in...
In this paper, the standard k-means algorithm has been improved in terms of the initial cluster cent...
Abstract: Clustering is a well known data mining technique which is used to group together data item...
Working with huge amount of data and learning from it by extracting useful information is one of the...
Probably the most famous clustering formulation is k-means. This is the focus today. Note: k-means i...
The popular k-means algorithm is used to discover clusters in vector data automatically. We present ...
AbstractIn this paper we combine the largest minimum distance algorithm and the traditional K-Means ...