This document is the Accepted Manuscript version of the following article: Renato Cordeiro de Amorin, Vladimir Makrenkov, and Boris Mirkin, 'A-Wardpβ: Effective hierarchical clustering using the Minkowski metric and a fast k-means initialisation', Information Services, Vol. 370-371, November 2016, pp. 343-354. The version of record is available online at doi: https://doi.org/10.1016/j.ins.2016.07.076.In this paper we make two novel contributions to hierarchical clustering. First, we introduce an anomalous pattern initialisation method for hierarchical clustering algorithms, called A-Ward, capable of substantially reducing the time they take to converge. This method generates an initial partition with a sufficiently large number of clusters....
We review the performance function associated with the familiar K-Means algorithm and that of the re...
The Ward error sum of squares hierarchical clustering method has been very widely used since its fir...
The objective of data mining is to take out information from large amounts of data and convert it in...
In this paper we make two novel contributions to hierarchical clustering. First, we introduce an ano...
In this paper we make two novel contributions to hierarchical clustering. First, we introduce an ano...
In this paper we introduce a new hierarchical clustering algorithm called Wardp. Unlike the original...
In this paper we introduce a new hierarchical clustering algorithm called Ward p . Unlike the origin...
The famous K-means clustering algorithm is sensitive to the selection of the initial centroids and m...
The Minkowski weighted K-means (MWK-means) is a recently developed clustering algorithm capable of c...
Partition-based clustering technique is one of several clustering techniques that attempt to directl...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...
The k-means clustering algorithm, whilst widely popular, is not without its drawbacks. In this paper...
Clustering analysis is one of the most commonly used techniques for uncovering patterns in data mini...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...
Hierarchical methods are well known clustering technique that can be potentially very useful for var...
We review the performance function associated with the familiar K-Means algorithm and that of the re...
The Ward error sum of squares hierarchical clustering method has been very widely used since its fir...
The objective of data mining is to take out information from large amounts of data and convert it in...
In this paper we make two novel contributions to hierarchical clustering. First, we introduce an ano...
In this paper we make two novel contributions to hierarchical clustering. First, we introduce an ano...
In this paper we introduce a new hierarchical clustering algorithm called Wardp. Unlike the original...
In this paper we introduce a new hierarchical clustering algorithm called Ward p . Unlike the origin...
The famous K-means clustering algorithm is sensitive to the selection of the initial centroids and m...
The Minkowski weighted K-means (MWK-means) is a recently developed clustering algorithm capable of c...
Partition-based clustering technique is one of several clustering techniques that attempt to directl...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...
The k-means clustering algorithm, whilst widely popular, is not without its drawbacks. In this paper...
Clustering analysis is one of the most commonly used techniques for uncovering patterns in data mini...
This paper represents another step in overcoming a drawback of K-Means, its lack of defense against ...
Hierarchical methods are well known clustering technique that can be potentially very useful for var...
We review the performance function associated with the familiar K-Means algorithm and that of the re...
The Ward error sum of squares hierarchical clustering method has been very widely used since its fir...
The objective of data mining is to take out information from large amounts of data and convert it in...