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ABSTRACT
Title |
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Automatic Clustering Approaches Based
On Initial Seed Points |
Authors |
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G.V.S.N.R.V.Prasad, V.Venkata Krishna, V.Vijaya Kumar |
Keywords |
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Clustering, partitioning, data mining, unsupervised learning, hierarchical clustering, kmeans. |
Issue Date |
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December 2011. |
Abstract |
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Since clustering is applied in many fields, a number of clustering techniques and algorithms have been proposed and are available in the literature. This paper proposes a novel approach to address the major problems in any of the partitional clustering algorithms like choosing appropriate K-value and selection of K-initial seed points. The performance of any partitional clustering algorithms depends on initial seed points which are random in all the existing partitional clustering algorithms. To overcome this problem, a novel algorithm called Weighted Interior Clustering (WIC) algorithm to find approximate initial seed-points, number of clusters and data points in the clusters is proposed in this paper. This paper also proposes another novel approach combining a newly proposed WIC algorithm with K-means named as Weighted Interior K-means Clustering (WIKC). The novelty of this WIKC is that it improves the quality and performance of K-means clustering algorithm with reduced complexity. The experimental results on various datasets, with various instances clearly indicates the efficacy of the proposed methods over the other methods. |
Page(s) |
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3800-3806 |
ISSN |
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0975–3397 |
Source |
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Vol. 3, Issue.12 |
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