A graphical user interface allows to fix the simulation parameters such as the number of replications, the sample size of each data set and the number of indicators for each block of variables. Using binary matrices, it is possible to set the structural relationships between constructs as well as nonlinear and interaction effects. A set of permissible outer weights and path coefficients is available to run the procedure and to obtain the data sets.
| Type: |
| Package |
| Title: |
| Simulating Data for PLS Mode B Structural Models |
| Version: |
| 1.2 |
| Date: |
| 2015-10-02 |
| Depends: |
| abind, tcltk, MASS |
| License: |
| GPL <>=2 |
| LazyLoad: |
| yes |
Dalgaard's Peter (2002) Rnews: The Newsletter of the R Project, Vol. 3.
Hanafi, M. 2007. PLS path modeling: Computation of latent variables with the estimation mode B. Computational Statistics, 22, 275-292.
Martinez-Ruiz, A., Aluja-Banet, T. (2013) Two-step PLS path modeling mode B: Nonlinear and interaction effects between formative constructs. In New Perspectives in Partial Least Squares and Related Methods, eds H. Abdi, W. Chin, V. Esposito Vinzi, G. Russolillo, and L. Trinchera, Springer Proceedings in Mathematics and Statistics, volume 56, pp. 187-199.
R Development Core Team (2011).R: A language and environment for statistical computing. R Foundation for Statistical Computing, Vienna, Austria. ISBN 3-900051-07-0, http://www.r-project.org/
Tenenhaus, M., Esposito Vinzi, V., Chatelin, Y. M., and Lauro, C. 2005. PLS path modeling. Computational Statistics & Data Analysis, 48, 159-205.
dgmbGui