International audienceAn original approach to cluster multi-component data sets is proposed that includes an estimation of the number of clusters. Using Prim's algorithm to construct a minimal spanning tree (MST) we show that, under the assumption that the vertices are approximately distributed according to a spatial homogeneous Poisson process, the number of clusters can be accurately estimated by thresholding the sequence of edge lengths added to the MST by Prim's alorithm. This sequence, called the Prim tra jectory, contains sufficient information to determine both the number of clusters and the approximate locations of the cluster centroids. The estimated number of clusters and cluster centroids are used to initialize the generalized Lloy...
K-means clustering is a very popular clustering technique, which is used in numerous applications. ...
K-means, a simple and effective clustering algorithm, is one of the most widely used algorithms-in c...
This paper proposes a novel k'-means algorithm for clustering analysis for the cases that the t...
International audienceAn original approach to cluster multi-component data sets is proposed that inc...
[Rapport de Recherche],This paper proposes an original approach to cluster multi-component data sets...
5 pagesInternational audienceThis paper proposes an original approach to cluster multi-component dat...
This paper proposes an original approach to cluster multi-component data sets with an estimation of ...
We present a procedure for the identification of clusters in multivariate data sets, based on the co...
The K-means clustering algorithm works on a data set with n data points in d dimensional space R^d. ...
We present new algorithms for the k-means clustering problem. They use the kd-tree data structure to...
AbstractÐIn k-means clustering, we are given a set of n data points in d-dimensional space Rd and an...
Clustering is a practical data mining approach of pattern detection. Because of the sensitivity of i...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
We present new algorithms for the k-means clustering problem. They use the kd-tree data structure to...
The traditional k-means algorithm has been widely used as a simple and efficient clustering method. ...
K-means clustering is a very popular clustering technique, which is used in numerous applications. ...
K-means, a simple and effective clustering algorithm, is one of the most widely used algorithms-in c...
This paper proposes a novel k'-means algorithm for clustering analysis for the cases that the t...
International audienceAn original approach to cluster multi-component data sets is proposed that inc...
[Rapport de Recherche],This paper proposes an original approach to cluster multi-component data sets...
5 pagesInternational audienceThis paper proposes an original approach to cluster multi-component dat...
This paper proposes an original approach to cluster multi-component data sets with an estimation of ...
We present a procedure for the identification of clusters in multivariate data sets, based on the co...
The K-means clustering algorithm works on a data set with n data points in d dimensional space R^d. ...
We present new algorithms for the k-means clustering problem. They use the kd-tree data structure to...
AbstractÐIn k-means clustering, we are given a set of n data points in d-dimensional space Rd and an...
Clustering is a practical data mining approach of pattern detection. Because of the sensitivity of i...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
We present new algorithms for the k-means clustering problem. They use the kd-tree data structure to...
The traditional k-means algorithm has been widely used as a simple and efficient clustering method. ...
K-means clustering is a very popular clustering technique, which is used in numerous applications. ...
K-means, a simple and effective clustering algorithm, is one of the most widely used algorithms-in c...
This paper proposes a novel k'-means algorithm for clustering analysis for the cases that the t...