Predictive model assessment in PLS-SEM: guidelines for using PLSpredict
National Tsing Hua University · Monash University Malaysia · +7 more institutions
Abstract
Purpose Partial least squares (PLS) has been introduced as a “causal-predictive” approach to structural equation modeling (SEM), designed to overcome the apparent dichotomy between explanation and prediction. However, while researchers using PLS-SEM routinely stress the predictive nature of their analyses, model evaluation assessment relies exclusively on metrics designed to assess the path model’s explanatory power. Recent research has proposed PLSpredict, a holdout sample-based procedure that generates case-level predictions on an item or a construct level. This paper offers guidelines for applying PLSpredict and explains the key choices researchers need to make using the procedure.…
Citation impact
- FWCI
- 244.50
- Percentile
- 100%
- References
- 72
Authors
7Topics & keywords
- Predictive power
- Structural equation modeling
- Partial least squares regression
- Computer science
- Construct (python library)
- Sample (material)
- Predictive modelling
- Path analysis (statistics)
- Decent work and economic growth