Book Chapter

Interpreting cluster structure in waveform data with visual assessment and Dunn’s index

S Mahallati, JC Bezdek, D Kumar, MR Popovic, TA Valiante

Studies in Computational Intelligence | Studies in Computational Intelligence | Published : 2018

Abstract

Dunn’s index was introduced in 1974 as a way to define and identify a “best” crisp partition on n objects represented by either unlabeled feature vectors or dissimilarity matrix data. This article examines the intimate relationship that exists between Dunn’s index, single linkage clustering, and a visual method called iVAT for estimating the number of clusters in the input data. The relationship of Dunn’s index to iVAT and single linkage in the labeled data case affords a means to better understand the utility of these three companion methods when data are crisply clustered in the unlabeled case (the real case). Numerical examples using simulated waveform data drawn from the field of neurosc..

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University of Melbourne Researchers