Publication | Open Access
Why PLS-SEM is suitable for complex modelling? An empirical illustration in big data analytics quality
426
Citations
80
References
2017
Year
Social Data AnalysisEmpirical ValidationEngineeringBig Data AnalyticsBusiness AnalyticsPartial Least SquaresBig Data InfrastructureBig Data ModelData ScienceManagementSystems EngineeringData IntegrationBig Data ArchitectureEmpirical IllustrationData ManagementComplex ModellingStructural Equation ModelingData ModelingSocial ImpactStructural Equation ModellingLatent Variable ModelInformation ManagementBig Data AcquisitionBig Data InteroperabilityBusinessManagement AnalyticsBig Data
The emergence of multivariate analysis techniques transforms empirical validation of theoretical concepts in social science and business research. In this context, structural equation modelling (SEM) has emerged as a powerful tool to estimate conceptual models linking two or more latent constructs. This paper shows the suitability of the partial least squares (PLS) approach to SEM (PLS-SEM) in estimating a complex model drawing on the philosophy of verisimilitude and the methodology of soft modelling assumptions. The results confirm the utility of PLS-SEM as a promising tool to estimate a complex, hierarchical model in the domain of big data analytics quality.
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