2007
DOI: 10.1146/annurev.psych.58.110405.085520
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Analysis of Nonlinear Patterns of Change with Random Coefficient Models

Abstract: Nonlinear patterns of change arise frequently in the analysis of repeated measures from longitudinal studies in psychology. The main feature of nonlinear development is that change is more rapid in some periods than in others. There generally also are strong individual differences, so although there is a general similarity of patterns for different persons over time, individuals exhibit substantial heterogeneity in their particular response. To describe data of this kind, researchers have extended the random c… Show more

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Cited by 119 publications
(132 citation statements)
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“…Although we did not predict such a non-linear change in identification, the result is not surprising given the fact that many behavioral processes exhibit differential rates of change (Cudek & Harring, 2007). The non-linear increase of post-merger identification points to the fact that change is not uniform over time.…”
Section: Predictors Of Change In Post-merger Identification 32contrasting
confidence: 70%
“…Although we did not predict such a non-linear change in identification, the result is not surprising given the fact that many behavioral processes exhibit differential rates of change (Cudek & Harring, 2007). The non-linear increase of post-merger identification points to the fact that change is not uniform over time.…”
Section: Predictors Of Change In Post-merger Identification 32contrasting
confidence: 70%
“…The equation generates eight probabilities, one for each of the eight disks, that sum to 1.0. To fit Luce's decision rule to behavior, we used nonlinear mixed-effects modeling and identified the maximum likelihood best-fitting parameter values (Cudeck & Harring, 2007;Davidian & Giltinan, 2003). Mixed-effects modeling is used to simultaneously generate estimates of parameter estimates for each subject and as a function of the independent variables (e.g., Laird & Ware, 1982;Pinheiro & Bates, 2004).…”
Section: Resultsmentioning
confidence: 99%
“…Toward that end, a submodel may be specified for each. At the population level (level 2), a general specification of an individual coefficient is a potentially nonlinear function of fixed parameters, (β ), covariates (z i ), and random effects (b i ) (see, e.g., Cudeck & Harring, 2007). For individual coefficient k, this is…”
Section: A Nonlinear Mixed-effects Modelmentioning
confidence: 99%