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Who Said It Best Episode 1: Daniel McNeish

August 19, 2024

Mighty Metrika focuses on statistical methods and mathematics for the analysis of small sample size data. As such, the project runs the risk of people with small sample sizes using tools and methods from mightymetrika.com and becoming over confident in their results because they used "small sample size methods."


The long term rigorous goal to combat this disservice is to host citizen science projects, include simulation function in R packages, and share simulation results from the literature and from mightymetrika.com tools through blogs.


A short and quick way to combat misuse is through the Who Said It Best series. The series will share some of the best warnings from the small sample size statistical literature.


In the Conclusion section of Daniel McNeish's paper Challenging Conventional Wisdom for Multivariate Statistical Models With Small Samples he shares a clear and wonderfully worded warning:

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