Monday, June 13, 2022
Using causality assessment indices in PLS-SEM
The article below discusses how one can use causality assessment indices, to assess the network of causal links in a model, in the context of structural equation modeling via partial least squares (PLS-SEM).
Kock, N. (2022). Using causality assessment indices in PLS-SEM. Data Analysis Perspectives Journal, 3(5), 1-6.
Link to full-text file for this and other DAPJ articles:
https://scriptwarp.com/dapj/#Published_Articles
Abstract:
We discuss the use of four causality assessment indices, through an illustrative model analyzed with WarpPLS, a leading software tool for structural equation modeling via partial least squares (PLS-SEM). The indices are the: Simpson's paradox ratio (SPR), R-squared contribution ratio (RSCR), statistical suppression ratio (SSR), and nonlinear bivariate causality direction ratio (NLBCDR). We provide an example of how the causality assessment indices can be presented in a journal article, conference paper, or other research report document.
Best regards to all!
Labels:
causality assessment,
NLBCDR,
RSCR,
Simpson's paradox,
SPR,
SSR,
statistical suppression
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