TY - JOUR
T1 - Partial least squares structural equation modeling approach for analyzing a model with a binary indicator as an endogenous variable
AU - Bodoff, David
AU - Ho, Shuk Ying
N1 - Publisher Copyright:
© 2016 by the Association for Information Systems.
PY - 2016
Y1 - 2016
N2 - In this paper, we focus on PLS-SEM’s ability to handle models with observable binary outcomes. We examine the different ways in which a binary outcome may appear in a model and distinguish those situations in which a binary outcome is indeed problematic versus those in which one can easily incorporate it into a PLS-SEM analysis. Explicating such details enables IS researchers to distinguish different situations rather than avoid PLS-SEM altogether whenever a binary indicator presents itself. In certain situations, one can adapt PLS-SEM to analyze structural models with a binary observable variable as the endogenous construct. Specifically, one runs the PLS-SEM first stage as is. Subsequently, one uses the output for the binary variable and latent variable antecedents from this analysis in a separate logistic regression or discriminant analysis to estimate path coefficients for just that part of the structural model. We also describe a method—regularized generalized canonical correlation analysis (RGCCA)—from statistics, which is similar to PLS-SEM but unequivocally allows binary outcomes.
AB - In this paper, we focus on PLS-SEM’s ability to handle models with observable binary outcomes. We examine the different ways in which a binary outcome may appear in a model and distinguish those situations in which a binary outcome is indeed problematic versus those in which one can easily incorporate it into a PLS-SEM analysis. Explicating such details enables IS researchers to distinguish different situations rather than avoid PLS-SEM altogether whenever a binary indicator presents itself. In certain situations, one can adapt PLS-SEM to analyze structural models with a binary observable variable as the endogenous construct. Specifically, one runs the PLS-SEM first stage as is. Subsequently, one uses the output for the binary variable and latent variable antecedents from this analysis in a separate logistic regression or discriminant analysis to estimate path coefficients for just that part of the structural model. We also describe a method—regularized generalized canonical correlation analysis (RGCCA)—from statistics, which is similar to PLS-SEM but unequivocally allows binary outcomes.
KW - Binary endogenous variables
KW - PLS
KW - Partial least squares
KW - Structural equation modeling
UR - http://www.scopus.com/inward/record.url?scp=84961242925&partnerID=8YFLogxK
U2 - 10.17705/1cais.03823
DO - 10.17705/1cais.03823
M3 - Article
SN - 1529-3181
VL - 38
SP - 400
EP - 419
JO - Communications of the Association for Information Systems
JF - Communications of the Association for Information Systems
IS - 1
M1 - 23
ER -