A new approach to structural equation modeling based on so-called extended redundancy analysis has been recently proposed in the literature, enhanced with the added characteristic of generalizing redundancy analysis and reduced-rank regression models for more than two blocks. In this approach, the relationships between the observed exogenous variables and the observed endogenous variables are moderated by the presence of unobservable composites that were estimated as linear combinations of exogenous variables, permitting a great flexibility to specify and fit a variety of structural relationships. In this paper, we propose the SAS macro %ERA to specify and fit structural relationships in the extended redundancy analysis (ERA) framework. Two examples (simulation and real data) are provided in order to reproduce results appearing in the original article where ERA was proposed.

Lovaglio, P., Vacca, G. (2016). ERA: A sas macro for extended redundancy analysis. JOURNAL OF STATISTICAL SOFTWARE, 74(1), 1-19 [10.18637/jss.v074.c01].

ERA: A sas macro for extended redundancy analysis

LOVAGLIO, PIETRO GIORGIO
Primo
;
VACCA, GIANMARCO
Ultimo
2016

Abstract

A new approach to structural equation modeling based on so-called extended redundancy analysis has been recently proposed in the literature, enhanced with the added characteristic of generalizing redundancy analysis and reduced-rank regression models for more than two blocks. In this approach, the relationships between the observed exogenous variables and the observed endogenous variables are moderated by the presence of unobservable composites that were estimated as linear combinations of exogenous variables, permitting a great flexibility to specify and fit a variety of structural relationships. In this paper, we propose the SAS macro %ERA to specify and fit structural relationships in the extended redundancy analysis (ERA) framework. Two examples (simulation and real data) are provided in order to reproduce results appearing in the original article where ERA was proposed.
Articolo in rivista - Articolo scientifico
Alternating least squares; Extended redundancy analysis; Latent components; SAS macro;
English
2016
74
1
1
19
partially_open
Lovaglio, P., Vacca, G. (2016). ERA: A sas macro for extended redundancy analysis. JOURNAL OF STATISTICAL SOFTWARE, 74(1), 1-19 [10.18637/jss.v074.c01].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/152447
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