The Series of Dice Rolls thread reminded me of some weird math paradoxes described in Martin Gardner's Colossal Book of Mathematics. Actually I'm not sure if they should be considered "paradoxes" just incredibly nonintuitive. Here's one:
Let's say you have two hats (black and gray) on a table. In the black hat are 5 colored chips and 6 white ones. In the gray hat are 3 colored chips and 4 white ones. Which hat would you pick from to maximize your chances of picking a colored chip? Obviously the black one -- your chances are 5/11 (~.45) vs 3/7 (~.43).
Now there is a 2nd table, also with a black and gray hat. In the black hat are 6 colored chips and 3 white chips. In the gray hat are 9 colored chips and 5 white ones. Now which hat do you choose to get a colored chip? Again, the black one -- your chances are 6/9 (~.67) vs 9/14 (~.64).
Easy so far... but now what happens if you combine the contents of the same colored hats? Now you have a black hat with 11 colored and 9 white chips, and a gray hat with 12 colored and 9 white chips. Now, if you want to maximize your chances of picking a colored chip, you pick from the gray hat 12/21 (~.57) vs 11/21 (~.52)
... what the heck happened?
This mathematical strangeness obviously has implications in research, especially when combining two independent studies. An example given in the book is that two independent investigations of the effectiveness of a drug may show that it is more effective on men than women while combining the two may show the opposite. There was even an example of this turning up in real life in an investigation to see if there was sex bias in student admissions at Berkeley (Science, "Sex Bias in Graduate Admissions: Data from Berkeley", February 1985)
This one is known as "Simpson's Paradox". There is another cool paradox that has deeper statistical implications that I will add later, but I wanted to see what you guys knew about this one first.
Let's say you have two hats (black and gray) on a table. In the black hat are 5 colored chips and 6 white ones. In the gray hat are 3 colored chips and 4 white ones. Which hat would you pick from to maximize your chances of picking a colored chip? Obviously the black one -- your chances are 5/11 (~.45) vs 3/7 (~.43).
Now there is a 2nd table, also with a black and gray hat. In the black hat are 6 colored chips and 3 white chips. In the gray hat are 9 colored chips and 5 white ones. Now which hat do you choose to get a colored chip? Again, the black one -- your chances are 6/9 (~.67) vs 9/14 (~.64).
Easy so far... but now what happens if you combine the contents of the same colored hats? Now you have a black hat with 11 colored and 9 white chips, and a gray hat with 12 colored and 9 white chips. Now, if you want to maximize your chances of picking a colored chip, you pick from the gray hat 12/21 (~.57) vs 11/21 (~.52)
This mathematical strangeness obviously has implications in research, especially when combining two independent studies. An example given in the book is that two independent investigations of the effectiveness of a drug may show that it is more effective on men than women while combining the two may show the opposite. There was even an example of this turning up in real life in an investigation to see if there was sex bias in student admissions at Berkeley (Science, "Sex Bias in Graduate Admissions: Data from Berkeley", February 1985)
This one is known as "Simpson's Paradox". There is another cool paradox that has deeper statistical implications that I will add later, but I wanted to see what you guys knew about this one first.