We investigate here the behavior of the standard k-means clustering algorithm and several alternatives to it: the k-harmonic means algorithm due to Zhang and colleagues, fuzzy k-means, Gaussian expectation-maximization, and two new variants of k-harmonic means. Our aim is to find which aspects of these algorithms contribute to finding good clusterings, as opposed to converging to a low-quality local optimum. We describe each algorithm in a unified framework that introduces separate cluster membership and data weight functions. We then show that the algorithms do behave very differently from each other on simple low-dimensional synthetic datasets, and that the k-harmonic means method is superior. Having a soft membership function is esse...
Abstract — Clustering is a collection of objects which are similar between them and dissimilar to th...
With the hypothesis of Gaussian distribution of patterns, K-means and its extensions are good for cl...
Abstract: K-means algorithm is a popular, unsupervised and iterative clustering algorithmwell known ...
We investigate here the behavior of the standard k-means clustering algorithm and several alternativ...
The K-harmonic means clustering algorithm (KHM) is a new clustering method used to group data such t...
Clustering is a process of extracting reliable, unique, effective and comprehensible patterns from d...
Among the data clustering algorithms, the k-means (KM) algorithm is one of the most popular clusteri...
We review the performance function associated with the familiar K-Means algorithm and that of the re...
It is well known that some local search heuristics for K-clustering problems, such as k-means heuri...
In present time many clustering techniques are use the data mining. The clustering gives the best pe...
K-Means is one of the most popular clustering algorithms, and it is easy to implement It seeks to m...
215 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2004.The study of the properties o...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
The traditional clustering algorithm, K-means, is famous for its simplicity and low time complexity....
ii Clustering involves partitioning a given data set into several groups based on some similarity/di...
Abstract — Clustering is a collection of objects which are similar between them and dissimilar to th...
With the hypothesis of Gaussian distribution of patterns, K-means and its extensions are good for cl...
Abstract: K-means algorithm is a popular, unsupervised and iterative clustering algorithmwell known ...
We investigate here the behavior of the standard k-means clustering algorithm and several alternativ...
The K-harmonic means clustering algorithm (KHM) is a new clustering method used to group data such t...
Clustering is a process of extracting reliable, unique, effective and comprehensible patterns from d...
Among the data clustering algorithms, the k-means (KM) algorithm is one of the most popular clusteri...
We review the performance function associated with the familiar K-Means algorithm and that of the re...
It is well known that some local search heuristics for K-clustering problems, such as k-means heuri...
In present time many clustering techniques are use the data mining. The clustering gives the best pe...
K-Means is one of the most popular clustering algorithms, and it is easy to implement It seeks to m...
215 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2004.The study of the properties o...
Advances in recent techniques for scientific data collection in the era of big data allow for the sy...
The traditional clustering algorithm, K-means, is famous for its simplicity and low time complexity....
ii Clustering involves partitioning a given data set into several groups based on some similarity/di...
Abstract — Clustering is a collection of objects which are similar between them and dissimilar to th...
With the hypothesis of Gaussian distribution of patterns, K-means and its extensions are good for cl...
Abstract: K-means algorithm is a popular, unsupervised and iterative clustering algorithmwell known ...