A recent method to specify and fit structural equation modelling in the Redundancy Analysis framework based on so-called Extended Redundancy Analysis has been proposed in the literature. In this approach, the relationships between the observed exogenous variables and the observed endogenous variables are moderated by the presence of unobservable composites, estimated as linear combinations of exogenous variables. However, in the presence of direct effects linking exogenous and endogenous variables, or concomitant indicators, the composite scores are estimated by ignoring the presence of the specified direct effects. To fit structural-equation models, we propose a new specification and estimation method, called Generalized Redundancy Analysis, allowing us to specify and fit a variety of relationships among composites, endogenous variables and external covariates. The proposed methodology extends the Extended Redundancy Analysis method, using a more suitable specification and estimation algorithm, by allowing for covariates that affect endogenous indicators indirectly through the composites and/or directly. To illustrate the advantages of GRA over ERA we propose a simulation study small samples Moreover, we propose an application aimed at estimating the impact of formal human capital on the initial earnings of graduates of an Italian university, utilizing a structural model consistent with well-established economic theory

Lovaglio, P., Vittadini, G. (2014). Structural Equation Models in a Redundancy Analysis Framework with Covariates. MULTIVARIATE BEHAVIORAL RESEARCH, 49(5), 486-501 [10.1080/00273171.2014.931798].

Structural Equation Models in a Redundancy Analysis Framework with Covariates

LOVAGLIO, PIETRO GIORGIO;VITTADINI, GIORGIO
2014

Abstract

A recent method to specify and fit structural equation modelling in the Redundancy Analysis framework based on so-called Extended Redundancy Analysis has been proposed in the literature. In this approach, the relationships between the observed exogenous variables and the observed endogenous variables are moderated by the presence of unobservable composites, estimated as linear combinations of exogenous variables. However, in the presence of direct effects linking exogenous and endogenous variables, or concomitant indicators, the composite scores are estimated by ignoring the presence of the specified direct effects. To fit structural-equation models, we propose a new specification and estimation method, called Generalized Redundancy Analysis, allowing us to specify and fit a variety of relationships among composites, endogenous variables and external covariates. The proposed methodology extends the Extended Redundancy Analysis method, using a more suitable specification and estimation algorithm, by allowing for covariates that affect endogenous indicators indirectly through the composites and/or directly. To illustrate the advantages of GRA over ERA we propose a simulation study small samples Moreover, we propose an application aimed at estimating the impact of formal human capital on the initial earnings of graduates of an Italian university, utilizing a structural model consistent with well-established economic theory
Articolo in rivista - Articolo scientifico
Structural Equation Modeling, Covariance Structure Analysis, Component Analysis, Redundancy Analysis
English
2014
49
5
486
501
none
Lovaglio, P., Vittadini, G. (2014). Structural Equation Models in a Redundancy Analysis Framework with Covariates. MULTIVARIATE BEHAVIORAL RESEARCH, 49(5), 486-501 [10.1080/00273171.2014.931798].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/51804
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