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Pyramidal classification based on incomplete dissimilarity data
Authors:Wolfgang Gaul  Martin Schader
Affiliation:(1) Present address: Institute of Decision Theory and Operations Research, University of Karlsruhe, Germany;(2) Present address: Department of Information Systems, University of Mannheim, Germany
Abstract:
Two algorithms for pyramidal classification — a generalization of hierarchical classification — are presented that can work with incomplete dissimilarity data. These approaches — a modification of the pyramidal ascending classification algorithm and a least squares based penalty method — are described and compared using two different types of complete dissimilarity data in which randomly chosen dissimilarities are assumed missing and the non-missing ones are subjected to random error. We also consider relationships between hierarchical classification and pyramidal classification solutions when both are based on incomplete dissimilarity data.
Keywords:Cluster analysis  Missing values  Monte Carlo evaluation  Penalty approach  Pyramidal classification
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