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Unsupervised classification methods in food sciences: discussion and outlook
Authors:Marcin Kozak  Christine H Scaman
Affiliation:1. Department of Biometry, Faculty of Agriculture and Biology, Warsaw University of Life Sciences, Nowoursynowska 159, PL‐02‐776 Warsaw, Poland;2. Food, Nutrition, and Health, Faculty of Land and Food Systems, University of British Columbia, Vancouver, V6T 1Z4, Canada
Abstract:
This paper reviews three unsupervised multivariate classification methods: principal component analysis, principal component similarity analysis and heuristic cluster analysis. The theoretical basis of each method is presented in brief, and assumptions inherent to the methods are highlighted. A literature review shows that these methods have sometimes been used inappropriately or without referencing all essential parameters. The paper also brings to the attention of the reader a relatively unknown method: probabilistic or model‐based cluster analysis. The goal of this method is to uncover the true classification of objects rather than a convenient classification provided by the other methods. For this reason it is felt that model‐based cluster analysis will have broad application in the future. Copyright © 2008 Society of Chemical Industry
Keywords:multivariate analysis  unsupervised classification  principal component analysis  principal component similarity analysis  heuristic cluster analysis  model‐based cluster analysis
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