Resources
We would like to acknowledge some excellent online and peer-reviewed material about power simulation and mixed effects models, which we have borrowed from liberally in the tutorial. These resouces represent an excellent next step in your exploration of simulation-based power analysis.
R
DeBruine & Barr (2021) paper on using simulation to understand mixed effects models: https://journals.sagepub.com/doi/epdf/10.1177/2515245920965119
Kumle et al. (2021) paper on estimating power in GLMMs: https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8613146/
Julian Quandt’s 4-part blog series on power analysis via simulation:
- https://julianquandt.com/post/power-analysis-by-data-simulation-in-r-part-i/
- https://julianquandt.com/post/power-analysis-by-data-simulation-in-r-part-ii/
- https://julianquandt.com/post/power-analysis-by-data-simulation-in-r-part-iii/
- https://julianquandt.com/post/power-analysis-by-data-simulation-in-r-part-iv/
Stata
Chuck Huber’s 4-part blog series on power analysis via simulation:
- https://blog.stata.com/2019/01/10/calculating-power-using-monte-carlo-simulations-part-1-the-basics/
- https://blog.stata.com/2019/01/29/calculating-power-using-monte-carlo-simulations-part-2-running-your-simulation-using-power/
- https://blog.stata.com/2019/08/13/calculating-power-using-monte-carlo-simulations-part-3-linear-and-logistic-regression/
- https://blog.stata.com/2019/08/20/calculating-power-using-monte-carlo-simulations-part-4-multilevel-longitudinal-models/