Recently, a three-stage version of K-Means has been introduced, at which not only clusters and their centers, but also feature weights are adjusted to minimize the summary p-th power of the Minkowski p-distance between entities and centroids of their clusters. The value of the Minkowski exponent p appears to be instrumental in the ability of the method to recover clusters hidden in data. This paper advances into the problem of finding the best p for a Minkowski metric-based version of K-Means, in each of the following two settings: semi-supervised and unsupervised. This paper presents experimental evidence that solutions found with the proposed approaches are sufficiently close to the optimum.Peer reviewe
The main purpose of this paper is to suggest a family of Minkowski distances as a tool for measuring...
Cluster analysis is a statistical analysis technique that divides the research objects into relative...
K-means is one of the simplest unsupervised learning algorithms that solve the well known clustering...
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...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...
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...
The Minkowski weighted K-means (MWK-means) is a recently developed clustering algorithm capable of c...
The weighted variant of k-Means (Wk-Means), which assigns values to features based on their relevanc...
We consider the Weighted K-Means algorithm with distributed centroids aimed at clustering data sets ...
In this paper we introduce the Minkowski weighted partition around medoids algorithm (MW-PAM). This ...
The issue of determining “the right number of clusters” in K-Means has attracted considerable intere...
We present an unsupervised method that selects the most relevant features using an embedded strategy...
In k-Clustering we are given a multiset of n vectors X subset Z^d and a nonnegative number D, and we...
The main purpose of this paper is to suggest a family of Minkowski distances as a tool for measuring...
Cluster analysis is a statistical analysis technique that divides the research objects into relative...
K-means is one of the simplest unsupervised learning algorithms that solve the well known clustering...
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...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...
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...
The Minkowski weighted K-means (MWK-means) is a recently developed clustering algorithm capable of c...
The weighted variant of k-Means (Wk-Means), which assigns values to features based on their relevanc...
We consider the Weighted K-Means algorithm with distributed centroids aimed at clustering data sets ...
In this paper we introduce the Minkowski weighted partition around medoids algorithm (MW-PAM). This ...
The issue of determining “the right number of clusters” in K-Means has attracted considerable intere...
We present an unsupervised method that selects the most relevant features using an embedded strategy...
In k-Clustering we are given a multiset of n vectors X subset Z^d and a nonnegative number D, and we...
The main purpose of this paper is to suggest a family of Minkowski distances as a tool for measuring...
Cluster analysis is a statistical analysis technique that divides the research objects into relative...
K-means is one of the simplest unsupervised learning algorithms that solve the well known clustering...