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Paper Title

The Impact of Misspecifying the Within-Subject Covariance Structure in Multiwave Longitudinal Multilevel Models: A Monte Carlo Study

Keywords

  • Multilevel Models
  • Mixed Models
  • Longitudinal Data Analysis
  • Monte Carlo Study
  • Misspecification
  • Covariance Structure
  • Random Effects
  • Growth Parameter Estimates
  • Statistical Power
  • Standard Errors
  • Type I Error Rate
  • Unstructured Matrix
  • Model Specification
  • Compensatory Relationship
  • Longitudinal Error Structure

Article Type

Original Article

Research Impact Tools

Issue

Volume : 42 | Issue : 3 | Page No : 557-592

Published On

December, 2007

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Abstract

This Monte Carlo study examined the impact of misspecifying the 𝚺 matrix in longitudinal data analysis under both the multilevel model and mixed model frameworks. Under the multilevel model approach, under-specification and general-misspecification of the 𝚺 matrix usually resulted in overestimation of the variances of the random effects (e.g., τ00, ττ11 ) and standard errors of the corresponding growth parameter estimates (e.g., SEβ 0, SEβ 1). Overestimates of the standard errors led to lower statistical power in tests of the growth parameters. An unstructured 𝚺 matrix under the mixed model framework generally led to underestimates of standard errors of the growth parameter estimates. Underestimates of the standard errors led to inflation of the type I error rate in tests of the growth parameters. Implications of the compensatory relationship between the random effects of the growth parameters and the longitudinal error structure for model specification were discussed.

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