This paper represents another step in overcoming a drawback of K-Means, its lack of defense against noisy features, using feature weights in the criterion. The Weighted K-Means method by Huang et al. (2008, 2004, 2005) [5–7] is extended to the corresponding Minkowski metric for measuring distances. Under Minkowski metric the feature weights become intuitively appealing feature rescaling factors in a conventional K-Means criterion. To see how this can be used in addressing another issue of K-Means, the initial setting, a method to initialize K-Means with anomalous clusters is adapted. The Minkowski metric based method is experimentally validated on datasets from the UCI Machine Learning Repository and generated sets of Gaussian clusters, bot...
This document is the Accepted Manuscript version of the following article: Renato Cordeiro de Amorin...
The aim of feature reduction is reduction of the size of data file, elimination of irrelevant featur...
In this paper we make two novel contributions to hierarchical clustering. First, we introduce an ano...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...
In this paper we introduce the Constrained Minkowski Weighted K-Means. This algorithm calculates clu...
Recently, a three-stage version of K-Means has been introduced, at which not only clusters and their...
The weighted variant of k-Means (Wk-Means), which assigns values to features based on their relevanc...
Minkowski Weighted K-Means is a variant of K-Means set in the Minkowski space, automatically computi...
Minkowski Weighted K-Means is a variant of K-Means set in the Minkowski space, automatically computi...
We consider the Weighted K-Means algorithm with distributed centroids aimed at clustering data sets ...
The Minkowski weighted K-means (MWK-means) is a recently developed clustering algorithm capable of c...
In this paper we introduce the Minkowski weighted partition around medoids algorithm (MW-PAM). This ...
In a real-world data set there is always the possibility, rather high in our opinion, that different...
Cluster analysis is a statistical analysis technique that divides the research objects into relative...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
This document is the Accepted Manuscript version of the following article: Renato Cordeiro de Amorin...
The aim of feature reduction is reduction of the size of data file, elimination of irrelevant featur...
In this paper we make two novel contributions to hierarchical clustering. First, we introduce an ano...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...
In this paper we introduce the Constrained Minkowski Weighted K-Means. This algorithm calculates clu...
Recently, a three-stage version of K-Means has been introduced, at which not only clusters and their...
The weighted variant of k-Means (Wk-Means), which assigns values to features based on their relevanc...
Minkowski Weighted K-Means is a variant of K-Means set in the Minkowski space, automatically computi...
Minkowski Weighted K-Means is a variant of K-Means set in the Minkowski space, automatically computi...
We consider the Weighted K-Means algorithm with distributed centroids aimed at clustering data sets ...
The Minkowski weighted K-means (MWK-means) is a recently developed clustering algorithm capable of c...
In this paper we introduce the Minkowski weighted partition around medoids algorithm (MW-PAM). This ...
In a real-world data set there is always the possibility, rather high in our opinion, that different...
Cluster analysis is a statistical analysis technique that divides the research objects into relative...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
This document is the Accepted Manuscript version of the following article: Renato Cordeiro de Amorin...
The aim of feature reduction is reduction of the size of data file, elimination of irrelevant featur...
In this paper we make two novel contributions to hierarchical clustering. First, we introduce an ano...