Abstract
Scientists may wish to analyze correlated outcome data with constraints among the responses, For example, piecewise linear regression in a longitudinal data analysis can require use of a general linear mixed model combined with linear parameter constraints. Although well developed for standard univariate models, there are no general results that allow a data analyst to specify a mixed model equation in conjunction with a set of constraints on the parameters. We resolve the difficulty by precisely describing conditions that allow specifying linear parameter constraints that insure the validity of estimates and tests in a general linear mixed model. The recommended approach requires only straightforward and noniterative calculations to implement. We illustrate the convenience and advantages of the methods with a comparison of cognitive developmental patterns in a study of individuals from infancy to early adulthood for children from low-income families.
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Edwards, L. J., Stewart, P. W., Muller, K. E., & Helms, R. W. (2001). Linear equality constraints in the general linear mixed model. Biometrics, 57(4), 1185–1190. https://doi.org/10.1111/j.0006-341X.2001.01185.x
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