In this halloween-themed lecture, we go into more detail on the foundations of hypothesis testing – specifically hypothesis testing with small sample sizes. This allows us to talk about where the Student's t test comes from (and why it is defined that way) as well as where the Chi-square test comes from (and why it is defined that way). Throughout the lecture, we highlight the importance of statistical power and do a power analysis example for a paired-difference t-test.
Archived lectures from undergraduate course on stochastic simulation given at Arizona State University by Ted Pavlic
Thursday, October 28, 2021
Lecture I (2021-10-28): Statistical Reflections [Halloween Themed]
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