Steffen Grønneberg: Non-parametric regression among factor scores: Motivation and diagnostics for nonlinear structural equation models

Structural equation models are simultaneous equation regression models, whose variables are latent, and measured via a confirmatory factor model (that is, with measurement error and repeated measurements). When the functional form of the simultaneous equation system is unknown, it has previously been observed in simulations that factor scores inputted into non-parametric regression methods approximate the true functional form. Factor scores estimate the latent variables (per person), and several types exist. We provide a theoretical (though population-based) analysis of this procedure, and provide assumptions under which it is theoretically justified in using Bartlett factor scores, which are simple linear transformations of the data. In simulations, we compare this suggestion to an already available though understudied non-linear and computationally heavy procedure, and observe that the simple Bartlett approach appears to work better.

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Steffen Grønneberg is Professor at the Department of Economics at BI (Norwegian Business School), Oslo.

Published Jan. 30, 2024 1:28 PM - Last modified Feb. 26, 2024 12:37 PM