Stats
Further explanation about Type I and Type II errors (April 5, 2007)
Category: Hypothesis testing
I got some feedback that my definitions of Type I
errors and Type II errors would be clearer if I
specified what the actual hypothesis are. I wanted to avoid symbols like mu or pi, so here is
what I wrote.
Consider a new drug that we will put on the market if we can show that it is
better than a placebo. In this context, H0 would represent the hypothesis that the
average improvement (or perhaps the probability of improvement) among all patients
taking the new drug is equal to the average improvement (probability of improvement)
among all patients taking the placebo.
as well as
Suppose we are comparing two groups of patients, one with a possibly dangerous
exposure (e.g., non-ionizing radiation), and the other unexposed. In this context, H0
would represent the hypothesis that the average level of harm (or perhaps the
probability of harm) among those with exposure is equal to the average level
(probability) of harm among those without the exposure.
I really appreciate people who take the time to suggest improvements to my web pages.
07/08/2008.