Baron Samedi
Critical Thinker
- Joined
- Dec 13, 2006
- Messages
- 476
I'm sorry. Now I feel bad that you did all that work. I didn't give an adequate description of what I meant. That result is not at all surprising (except that I'm surprised it dropped as much as it did).
I meant that out of your 10,000 (or 1,000,000) trials, the only trials that you start testing for signficance after 30 guesses would be trials number 2, 3, 5, 7, 11, 13, 17, etc. And I chose prime numbers for an example, but I don't know whether or not the proportion of numbers that are prime numbers is equal to the proportion of trials subject to early review (I suspect using prime numbers is way too high - something like squares of whole numbers may be closer).
Linda
Sadly, it's actually fun for me to do and try these sims. I need a life.
Perhaps I'm missing something here. I think I follow you that we only have the option to stop on the trial level, and not the tester level. In real life, then, I don't see how this can work. If we look at the AIDS in Africa case, we may only have one trial. One doctor sets up the study, patients come in, are given either drug or placebo, and are tested at time=t. The patient is my coin flip. The doctor, if p << 0.001, will stop the trial early and publish results.
In the coin flip/psychic case, I'm going to have 10,000 people come in to be tested, each with 385 guesses to make. Your suggestion states that most of these people have to have the full 385. I'm suggesting that even though the rule may be in place, it may not be observed. In fact, looking at my data, 99% of the people did go the full 385 tests. So someone may innocently believe that stopping early should have no major impact. Time is money, money is time, people have lives, and why keep trying more and more tests when a person is clearly showing better than random results. How many testers would be honest enough to continue?