4.3 Article

Executing and interpreting applications of PLS-SEM: Updates for family business researchers

Journal

JOURNAL OF FAMILY BUSINESS STRATEGY
Volume 12, Issue 3, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.jfbs.2020.100392

Keywords

Partial least squares; PLS-SEM; Structural equation modeling; Out-of-sample prediction; PLSpredict; Model selection; Discrete choice modeling; Endogeneity

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The use of partial least squares structural equation modeling (PLS-SEM) in family business research has been growing, with new model evaluation procedures and metrics discussed to enhance the understanding of the method. PLS-SEM remains valuable for predicting target variables and extending the scope of research.
The use of partial least squares structural equation modeling (PLS-SEM) has been gaining momentum in family business research. Since the publication of a PLS-SEM guidelines article in the Journal of Family Business Strategy's special issue on Innovative and Established Research Methods in Family Business in 2014, methodological research has developed new model evaluation methods and metrics and sharpened our understanding of the method's strengths and limitations. In light of these developments, we extend prior guidelines on PLS-SEM applications by discussing new model evaluation procedures (e.g., model selection) and metrics (e.g., PLSpredict). In addition, we highlight the usefulness of methodological extensions for discrete choice modeling and endogeneity assessment that considerably extend the scope of the PLS-SEM method, and emerging opportunities for the application of PLS-SEM with archival (secondary) data. PLS-SEM remains a valuable method in the context of family business research, especially when it comes to gaining a more sophisticated understanding of the drivers of family business behavior. Because of its properties, the PLS-SEM approach proves particularly valuable when the aim is to predict target variables (e.g., family firm performance) in the context of a causal model.

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