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An extension of the mixed-effects growth model that considers between-person differences in the within-subject variance and the autocorrelation.

Steffen Nestler
Published in: Statistics in medicine (2021)
Experience sampling methods have led to a significant increase in the availability of intensive longitudinal data. Typically, this type of data is analyzed with a mixed-effects model that allows to examine hypotheses concerning between-person differences in the mean structure by including multiple random effects per individual (eg, random intercept and random slopes). Here, we describe an extension of this model that-in addition to the random effects for the mean structure-also includes a random effect for the within-subject variance and a random effect for the autocorrelation. After the description of the model, we show how its parameters can be efficiently estimated using a marginal maximum likelihood (ML) approach. We then illustrate the model using a real data example. We also present the results of a small simulation study in which we compare the ML approach with a Bayesian estimation approach.
Keyphrases
  • machine learning
  • cross sectional
  • artificial intelligence
  • data analysis
  • deep learning