Publication | Closed Access
An Innovative Application of Composite-Based Structural Equation Modeling in Hospitality Research With Empirical Example
34
Citations
37
References
2020
Year
Customer SatisfactionFactor ModelsHospitalityPartial Least SquaresInnovative ApplicationParallel AnalysisLatent ModelingHospitality ResearchManagementStatisticsStructural Equation ModelingService ResearchLatent Variable ModelPls CStructured Component AnalysisMarketingService EnvironmentBusinessTourismEmpirical ExampleHospitality Management
Partial least squares path modeling (PLS-PM) and generalized structured component analysis (GSCA) are two key estimators derived from a full-fledged composite-based structural equation modeling (SEM). The analyses of PLS-PM and GSCA have been recently extended to mimic factor-based SEM, and the extended approaches are called PLS C and GSCA M , respectively. Simulation studies have confirmed that the relative performance of PLS-PM is comparable with that of GSCA. Similarly, GSCA M , PLS C , and the traditional factor-based SEM perform equally well in parameter recovery. Although composite-based SEM perfectly fits into the current research landscape that focuses on a prediction-oriented approach, empirical research in the hospitality context that uses PLS-PM, GSCA, PLS C , and GSCA M estimators is extremely rare. To encourage hospitality researchers to adopt these methodologies, we demonstrate an illustrative example using PLS-PM, GSCA, PLS C , and GSCA M based on the confirmatory composite analysis (CCA) procedure. Measurement and structural invariances, applications of model fit, PLS predict , and importance-performance map analysis are incorporated into our example. Finally, practical management in the hospitality field based on this methodology is discussed.
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