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by whatshisface
1354 days ago
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Thanks for adding detail. I didn't offer any examples because I want to use ones that sound representative to you. The 95% confidence interval is in reference to a probability distribution, I'm not sure what you mean when you say that frequentist answers aren't in terms of those. As for your bayesian answer, there is a prior that would make their result equal to the frequentist one - and in another example where priors were more obviously crucial (weak evidence) the frequentist would still use Baye's theorem. Their ensemble would be all possible worlds in which they'd ask the question. |
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Maybe I should have been more explicit. Let me complete what I wrote above:
"What is commonly understood as 'Bayesian methods' will give answers in the form of a probability distribution FOR THE QUANTITY OF INTEREST. What is commonly understood as 'frequentist methods' will never do that."
In the sex ratio example, the 95% confidence interval [1.1 1.3] DOES NOT mean that the probability that the sex ratio is between 1.1 and 1.3 is 95%. What it means is that when you calculate confidence intervals using this method 95% of them will contain the true value of the parameter. It's not the same thing.
> As for your bayesian answer, there is a prior that would make their result equal to the frequentist one
So it doesn't _always_ give the same answer, does it? (In the best case you get the same answer by twisting what a confidence interval means and only if the "magic" prior is used.)
If you mean that frequentist methods shouldn't be used if they give a different answer I agree!
The problems with frequentist methods have been known for decades: https://www.jstor.org/stable/2281869
They are used because the are easy even though they give the wrong answer (or the answer to the wrong question) - not because they always give the right answer.