Definition
Longitudinal structural equation models (LSEMs) are statistical models that allow separating measurement error from true individual differences related to variability and/or change processes.
Description
Overview: Models for Measuring Variability Versus Change
In the context of LSEMs, it is common to distinguish between models for analyzing variability and models for analyzing change (Eid, 2007). Variability refers to short-term fluctuations around a fixed set point that are usually reversible (e.g., mood states, anger, hormone levels), whereas change is typically more long-lasting and often irreversible (e.g., developmental processes like physical growth or decline in fluid intelligence across adulthood). The most prominent LSEM approaches for modeling variability are based on latent state-trait (LST) theory (Steyer, Ferring, & Schmitt, 1992; Steyer, Schmitt, & Eid, 1999). Common LSEM approaches for modeling change are autoregressive (AR) models (Jöreskog, 1979), latent...
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The author would like to thank Brian Keller for creating the figures and Ginger Lockhart for helpful comments on the draft.
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Geiser, C. (2014). Longitudinal Structural Equation Modeling. In: Michalos, A.C. (eds) Encyclopedia of Quality of Life and Well-Being Research. Springer, Dordrecht. https://doi.org/10.1007/978-94-007-0753-5_1701
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