Replication as a Rule for Determining the Number of Clusters in Hierarchial Cluster Analysis
- 1 June 1992
- journal article
- Published by SAGE Publications in Applied Psychological Measurement
- Vol. 16 (2) , 119-128
- https://doi.org/10.1177/014662169201600202
Abstract
A single higher-order cluster analysis can be used to group cluster mean profiles derived from several preliminary analyses. Replication is confirmed when each higher-order cluster contains one cluster mean profile from each of the several preliminary analyses. This study evaluated the utility of replication as a stopping rule in hierarchical cluster analysis. Replication defined by higher-order clustering identifies the correct number of under lying populations that have distinct density regions in the multivariate measurement space. When increased within-population variance obliterates population distinctions, the replication criterion provides an underestimation of the actual number of latent populations. In the case of no true cluster structure or in the case of only two latent populations, chance replication can occur. Thus, replication suggested by higher-order cluster analysis is not a conservative test for the absence of a cluster structure, but it does provide valid evidence concerning the number of latent pop ulations when several are present.Keywords
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