Lecture 29- Multiple Testing Flashcards
What is multiple testing?
- Occurs in many cases where you are not just measuring one outcome but a number
- This requires multiple hypothesis tests
What is the chance of getting a type 1 error for any individual hypothesis test and what does this mean?
- Alpha level (significance level)
- This means that for a 95% confidence interval there is a 5% chance of rejecting the null even though t is true.
In multiple testing does the chances of getting a type 1 error change depending on sample size?
No
Answer the question on slide 554. What R function did you use and why could you use this?
Answer on slide
dbinom, could use because there is two options either p is less than 0.5 or it is greater than 0.5 it is therefore a binary variable that can be represented by a binary distribution
What happens to the chances of getting a false positive result when you do multiple tests in one day?
Chances are lot higher than alpha (the significance level) because tests may not be independent