K-means clustering and mixture model clustering: Reply to McLachlan (2011) and Vermunt (2011). |
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Authors: | Steinley, Douglas Brusco, Michael J. |
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Abstract: | McLachlan (2011) and Vermunt (2011) each provided thoughtful replies to our original article (Steinley & Brusco, 2011). This response serves to incorporate some of their comments while simultaneously clarifying our position. We argue that greater caution against overparamaterization must be taken when assuming that clusters are highly elliptical in nature. Specifically, users of mixture model clustering techniques should be wary of overreliance on fit indices, and the importance of cross-validation is highlighted. Additionally, we note that K-means clustering is part of a larger family of discrete partitioning algorithms, many of which are designed to solve problems identical to those for which mixture modeling approaches are often touted. (PsycINFO Database Record (c) 2011 APA, all rights reserved) |
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Keywords: | K-means clustering cluster analysis mixture modeling |
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