You are here

Cluster tendency methods for visualizing the data partitions

TitleCluster tendency methods for visualizing the data partitions
Publication TypeJournal Article
Year of Publication2019
AuthorsBasha, M. S., S. K. Mouleeswaran, and K. R. Prasad
JournalInternational Journal of Innovative Technology and Exploring Engineering
Volume8
Issue11
Pagination2978 - 2982
Date Published2019
Type of ArticleArticle
ISBN Number22783075 (ISSN)
KeywordsComputer Science and Engineering, Scopus
Abstract

Clustering is widely used technique for grouping of data objects based on similarity features. The similarity features are derived from the similarity or dissimilarity metrics like Euclidean, cosine etc. Traditional clustering methods such as k-means, and other graph-based techniques are major techniques for discovery of clusters. However, these methods require user interference for determining the number of clusters initially. Determining the number of clusters for given data is known as cluster tendency. There is chance for getting poor clustering results when using either k-means or graph-based clustering methods with intractable value of ‘k’ by user. Thus, it is required to focus on cluster tendency methods for knowing prior knowledge about number of clusters in clustering. This paper presents the various visual access tendency (VAT) methods for good assessment of number of clusters. © BEIESP.

DOI10.35940/ijitee.K2285.0981119
Short TitleInt. J. Innov. Technol. Explor. Eng.