Enhancing Variants of K-Means

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39,90 

ISBN: 6139983800
ISBN 13: 9786139983803
Autor: Chilamakur, Raghavendra/Kypa, Rajendra Prasad/Francis, Reuben Bernard
Verlag: LAP LAMBERT Academic Publishing
Umfang: 64 S.
Erscheinungsdatum: 26.01.2019
Auflage: 1/2019
Format: 0.5 x 22 x 15
Gewicht: 113 g
Produktform: Kartoniert
Einband: Kartoniert
Artikelnummer: 6304209 Kategorie:

Beschreibung

Clustering analysis is one of the most commonly used data processing algorithms. Over half a century, K-means remains the most popular clustering algorithm because of its simplicity. Traditional K-means clustering tries to assign n data objects to k clusters starting with random initial centers. However, most of the k- means variants tend to compute distance of each data point to each cluster centroid for every iteration. We propose a fast heuristic to overcome this bottleneck with only marginal increase in Mean Squared Error (MSE). We observe that across all iterations of K-means, a data point changes its membership only among a small subset of clusters. Our heuristic predicts such clusters for each data point by looking at nearby clusters after the first iteration of k-means. We augment well-known variants of k- means like Enhanced K-means and K-means with Triangle Inequality using our heuristic to demonstrate its effectiveness. For various datasets, our heuristic achieves speed-up of up-to 3 times when compared to efficient variants of k-means.

Autorenporträt

C. Raghavendra, pursuing Ph.D in Computer Science & Engineering from Bharath University, Chennai. Presently, he is working as Asst. Professor, CSE Dept., Institute of Aeronautical Engineering, Hyderabad. His research interests are Image processing & Security, Big Data.

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