Options
Segmentation of PLS path models by iterative reweighted regressions
Publikationstyp
Journal Article
Publikationsdatum
2016-10-01
Sprache
English
TORE-URI
Enthalten in
Volume
69
Issue
10
Start Page
4583
End Page
4592
Citation
Journal of Business Research 69 (10): 4583-4592 (2016-10-01)
Publisher DOI
Scopus ID
Uncovering unobserved heterogeneity is a requirement to obtain valid results when using structural equation modeling (SEM). Conventional segmentation methods usually fail in an SEM context because they account for the indicator data, but not for the latent variables and their relationships in the structural model. This research introduces a new segmentation approach to variance-based SEM using partial least squares path modeling (PLS). The iterative reweighted regressions segmentation method for PLS (PLS-IRRS) effectively identifies and treats unobserved heterogeneity in data sets. Compared to existing alternatives, PLS-IRRS is multiple times faster while delivering results of the same quality. Researchers should therefore routinely use PLS-IRRS to address the critical issue of unobserved heterogeneity in PLS.
Schlagworte
fsQCA
Fuzzy set qualitative comparative analysis
Genetic algorithms
Partial least squares
PLS
PLS-IRRS
Reweighted regressions
Segmentation
DDC Class
000: Allgemeines, Wissenschaft