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Cho, Gyeongcheol; Kim, Sunmee; Lee, Jonathan; Hwang, Heungsun; Sarstedt, Marko ORCID logoORCID: https://orcid.org/0000-0002-5424-4268 und Ringle, Christian M. (30. Mai 2023): A comparative study of the predictive power of component-based approaches to structural equation modeling. In: European Journal of Marketing, Bd. 57, Nr. 6: S. 1641-1661

Volltext auf 'Open Access LMU' nicht verfügbar.

Abstract

Purpose Generalized structured component analysis (GSCA) and partial least squares path modeling (PLSPM) are two key component-based approaches to structural equation modeling that facilitate the analysis of theoretically established models in terms of both explanation and prediction. This study aims to offer a comparative evaluation of GSCA and PLSPM in a predictive modeling framework.

Design/methodology/approach A simulation study compares the predictive performance of GSCA and PLSPM under various simulation conditions and different prediction types of correctly specified and misspecified models.

Findings The results suggest that GSCA with reflective composite indicators (GSCAR) is the most versatile approach. For observed prediction, which uses the component scores to generate prediction for the indicators, GSCAR performs slightly better than PLSPM with mode A. For operative prediction, which considers all parameter estimates to generate predictions, both methods perform equally well. GSCA with formative composite indicators and PLSPM with mode B generally lag behind the other methods.

Research limitations/implications Future research may further assess the methods’ prediction precision, considering more experimental factors with a wider range of levels, including more extreme ones.

Practical implications When prediction is the primary study aim, researchers should generally revert to GSCAR, considering its performance for observed and operative prediction together.

Originality/value This research is the first to compare the relative efficacy of GSCA and PLSPM in terms of predictive power.

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