Title of article
Power of Latent Growth Modeling for Detecting Linear Growth: Number of Measurements and Comparison With Other Analytic Approaches
Author/Authors
Fan Xitao & Fan Xiaotao ، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2004
Pages
19
From page
121
To page
139
Abstract
The authors investigated 2 issues concerning the power of latent growth modeling (LGM) in detecting linear growth: the effect of the number of repeated measurements on LGMʹs power in detecting linear growth and the comparison between LGM and some other approaches in terms of power for detecting linear growth. A Monte Carlo simulation design was used, with 3 crossed factors (growth magnitude, number of repeated measurements, and sample size) and 1,000 replications within each cell condition. The major findings were as follows: For 3 repeated measurements, a substantial proportion of samples failed to converge in structural equation modeling; the number of repeated measurements did not show any effect on the statistical power of LGM in detecting linear growth; and the LGM approach outperformed both the dependent t test and repeated-measures analysis of variance (ANOVA) in terms of statistical power for detecting growth under the conditions of small growth magnitude and small to moderate sample size conditions. The multivariate repeated-measures ANOVA approach consistently underperformed the other tests.
Keywords
latent growth modeling , repeated measures ANOVA , statistical power , Monte Carlo , dependent t test
Journal title
The Journal of Experimental Education
Serial Year
2004
Journal title
The Journal of Experimental Education
Record number
708686
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