k-Means algorithm and its variations are known to be fast clustering algorithms. However, they are sensitive to the choice of starting points and inefficient for solving clustering problems in large data sets. Recently, a new version of the k-means algorithm, the global k-means algorithm has been developed. It is an incremental algorithm that dynamically adds one cluster center at a time and uses each data point as a candidate for the k-th cluster center. Results of numerical experiments show that the global k-means algorithm considerably outperforms the k-means algorithms. In this paper, a new version of the global k-means algorithm is proposed. A starting point for the k-th cluster center in this algorithm is computed by minimizing an aux...
Clustering is a fundamental unsupervised machine learning task that aims to aggregate similar data i...
K-means clustering plays a vital role in data mining. However, its performance drastically drops whe...
We study the problem of finding an optimum clustering, a problem known to be NP-hard. Existing liter...
Clustering is an important task in data mining. It can be formulated as a global optimization proble...
The global k-means heuristic is a recently proposed (Likas, Vlassis and Verbeek, 2003) incremental a...
WOS: 000349247800009Clustering is an important task in data mining. It can be formulated as a global...
The k-means algorithm and its variations are known to be fast clustering algorithms. However, they a...
peer reviewedWe present the global k-means algorithm which is an incremental approach to clustering ...
The k-means algorithm and its variations are known to be fast clustering algorithms. However, they a...
We present the global k-means algorithm which is an incremental approach to clustering that dynamica...
The $k$-means algorithm is a very prevalent clustering method because of its simplicity, effectivene...
We present the global k-means algorithm which is an incremental approach to clustering that dynamica...
We study the problem of finding an optimum clustering, a problem known to be NP-hard. Existing liter...
Abstract: We study the problem of finding an optimum clustering, a problem known to be NP-hard. Exis...
Clustering is a fundamental unsupervised machine learning task that aims to aggregate similar data i...
Clustering is a fundamental unsupervised machine learning task that aims to aggregate similar data i...
K-means clustering plays a vital role in data mining. However, its performance drastically drops whe...
We study the problem of finding an optimum clustering, a problem known to be NP-hard. Existing liter...
Clustering is an important task in data mining. It can be formulated as a global optimization proble...
The global k-means heuristic is a recently proposed (Likas, Vlassis and Verbeek, 2003) incremental a...
WOS: 000349247800009Clustering is an important task in data mining. It can be formulated as a global...
The k-means algorithm and its variations are known to be fast clustering algorithms. However, they a...
peer reviewedWe present the global k-means algorithm which is an incremental approach to clustering ...
The k-means algorithm and its variations are known to be fast clustering algorithms. However, they a...
We present the global k-means algorithm which is an incremental approach to clustering that dynamica...
The $k$-means algorithm is a very prevalent clustering method because of its simplicity, effectivene...
We present the global k-means algorithm which is an incremental approach to clustering that dynamica...
We study the problem of finding an optimum clustering, a problem known to be NP-hard. Existing liter...
Abstract: We study the problem of finding an optimum clustering, a problem known to be NP-hard. Exis...
Clustering is a fundamental unsupervised machine learning task that aims to aggregate similar data i...
Clustering is a fundamental unsupervised machine learning task that aims to aggregate similar data i...
K-means clustering plays a vital role in data mining. However, its performance drastically drops whe...
We study the problem of finding an optimum clustering, a problem known to be NP-hard. Existing liter...