Canonical analysis of longitudinal and repeated measures data with stationary weights |
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Authors: | William Meredith John Tisak |
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Affiliation: | (1) Department of Psychology, University of California, 94720 Berkeley, California |
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Abstract: | When measuring the same variables on different occasions, two procedures for canonical analysis with stationary compositing weights are developed. The first, SUMCOV, maximizes the sum of the covariances of the canonical variates subject to norming constraints. The second, COLLIN, maximizes the largest root of the covariances of the canonical variates subject to norming constraints. A characterization theorem establishes a model building approach. Both methods are extended to allow for Cohort Sequential Designs. Finally a numerical illustration utilizing Nesselroade and Baltes data is presented.The authors wish to thank John Nesselroade for permitting us to use the data whose analysis we present. |
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Keywords: | canonical correlation stationary weights longitudinal data analysis |
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