Authors
Joonas Hämäläinen, Susanne Jauhiainen, Tommi Kärkkäinen
Publication date
2017/9/6
Journal
Algorithms
Volume
10
Issue
3
Pages
105
Publisher
mdpi
Description
Clustering is an unsupervised machine learning and pattern recognition method. In general, in addition to revealing hidden groups of similar observations and clusters, their number needs to be determined. Internal clustering validation indices estimate this number without any external information. The purpose of this article is to evaluate, empirically, characteristics of a representative set of internal clustering validation indices with many datasets. The prototype-based clustering framework includes multiple, classical and robust, statistical estimates of cluster location so that the overall setting of the paper is novel. General observations on the quality of validation indices and on the behavior of different variants of clustering algorithms will be given.
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