Demystifying the role of causal-predictive modeling using partial least squares structural equation modeling in information systems research
University of Houston · Universiti Putra Malaysia · +3 more institutions
Abstract
Purpose Partial least squares structural equation modeling (PLS-SEM) has become popular in the information systems (IS) field for modeling structural relationships between latent variables as measured by manifest variables. However, while researchers using PLS-SEM routinely stress the causal-predictive nature of their analyses, the model evaluation assessment relies exclusively on criteria designed to assess the path model's explanatory power. To take full advantage of the purpose of causal prediction in PLS-SEM, it is imperative for researchers to comprehend the efficacy of various quality criteria, such as traditional PLS-SEM criteria, model fit, PLSpredict, cross-validated predictive ability test (CVPAT)…
Citation impact
- FWCI
- 132.84
- Percentile
- 100%
- References
- 201
Authors
6Topics & keywords
- Structural equation modeling
- Partial least squares regression
- Causal model
- Latent variable
- Predictive modelling
- Field (mathematics)
- Goodness of fit
- Computer science
- Industry, innovation and infrastructure