Login / Signup

Composite reliability of multilevel data: It's about observed scores and construct meanings.

Mark H C Lai
Published in: Psychological methods (2020)
This article shows how the concept of reliability of composite scores, as defined in classical test theory, can be extended to the context of multilevel modeling. In particular, it discusses the contributions and limitations of the various level-specific reliability indices proposed by Geldhof, Preacher, and Zyphur (2014), denoted as ω̃b and ω̃w (and also α̃b and α̃w). One major limitation of those indices is that they are quantities for latent, unobserved level-specific composite scores, and are not suitable for observed composites at different levels. As illustrated using simulated data in this article, ω̃b can drastically overestimate the true reliability of between-level composite scores (i.e., observed cluster means). Another limitation is that the development of those indices did not consider the recent conceptual development on construct meanings in multilevel modeling (Stapleton & Johnson, 2019; Stapleton, Yang, & Hancock, 2016). To address the second limitation, this article defines reliability indices (ω2l, ωb, ωw, α2l, αb, αw) for three types of multilevel observed composite scores measuring various multilevel constructs: individual, configural, shared, and within-cluster. The article also shows how researchers can obtain sample point and interval estimates using the derived formulas and the provided R and Mplus code. In addition, a large-scale national data set was used to illustrate the proposed methods for estimating reliability for the three types of multilevel composite scores, and practical recommendations on when different indices should be reported are provided. (PsycInfo Database Record (c) 2021 APA, all rights reserved).
Keyphrases
  • electronic health record
  • big data
  • emergency department
  • machine learning
  • quality improvement
  • deep learning
  • artificial intelligence
  • reduced graphene oxide