Assessing linearity in structural equation models through graphics
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Date
2008Author
Porzio, Giovanni Camillo
Vitale, Maria Prosperina
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While Structural Equation Models (SEMs) generally assume linear
linkages between variables, it is a well-worn issue that this may not
adequately describe the complexity and richness of social
phenomena. For this reason, nonlinear SEMs that include interaction
effects between latent factors have been developed.
However, while a large literature is available on methods for their
estimation, few efforts have been devoted to the development of
adequate diagnostic tools. In particular, the use of graphics has been
rather limited so far, probably because of the partial information
provided by the SEM residuals.
Hence, with this paper we introduce a graphical device which aims to
evaluate the SEM linearity assumption, without any previous
estimation of nonlinear models. Specifically, we define a series of
plots based on the individual latent variable scores in order to
investigate nonlinear effects involving latent variables. In doing so, we
also highlight the potential for graphical tools within SEM when factor
scores for each individual in the sample are visualized.
We call our graphical device the latent joint effect plot, as it displays
the joint effect of two latent variables on some other response
variable. The idea is presented through both simulated data and an
illustrative example regarding the determinants that lead high school
students to drop out of the Italian education system.