Data clustering using K-Means based on Crow Search Algorithm
Cluster analysis is one of the popular data mining techniques and it is defined as the process of grouping similar data. K -Means is one of the clustering algorithms to cluster the numerical data. The features of K -Means clustering algorithm are easy to implement and it is efficient to handle large...
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Veröffentlicht in: | Sadhana (Bangalore) 2018-11, Vol.43 (11), p.1-12, Article 190 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Cluster analysis is one of the popular data mining techniques and it is defined as the process of grouping similar data.
K
-Means is one of the clustering algorithms to cluster the numerical data. The features of
K
-Means clustering algorithm are easy to implement and it is efficient to handle large amounts of data. The major problem with
K
-Means is the selection of initial centroids. It selects the initial centroids randomly and it leads to a local optimum solution. Recently, nature-inspired optimization algorithms are combined with clustering algorithms to obtain the global optimum solution. Crow Search Algorithm (CSA) is a new population-based metaheuristic optimization algorithm. This algorithm is based on the intelligent behaviour of the crows. In this paper, CSA is combined with the
K
-Means clustering algorithm to obtain the global optimum solution. Experiments are conducted on benchmark datasets and the results are compared to those from various clustering algorithms and optimization-based clustering algorithms. Also the results are evaluated with internal, external and statistical experiments to prove the efficiency of the proposed algorithm. |
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ISSN: | 0256-2499 0973-7677 |
DOI: | 10.1007/s12046-018-0962-3 |