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Research methodology
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- Research Monograph
Publishing Nutrition Research: A Review of Multivariate Techniques—Part 3: Data Reduction Methods
Journal of the Academy of Nutrition and DieteticsVol. 115Issue 7p1072–1082Published online: April 30, 2015- Philip M. Gleason
- Carol J. Boushey
- Jeffrey E. Harris
- Jamie Zoellner
Cited in Scopus: 49This is the ninth in a series of monographs on research design and analysis, and the third in a set of these monographs devoted to multivariate methods. The purpose of this article is to provide an overview of data reduction methods, including principal components analysis, factor analysis, reduced rank regression, and cluster analysis. In the field of nutrition, data reduction methods can be used for three general purposes: for descriptive analysis in which large sets of variables are efficiently summarized, to create variables to be used in subsequent analysis and hypothesis testing, and in questionnaire development.