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by wenc
1036 days ago
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Unless it’s a stacked analysis when results of one study depends on another, usually experts just eyeball the frequentist results and take a judgment call — that’s been my experience (not generalizing but I think in business people like doing things that are simple and easy to understand). I think it’s definitely possible that Bayesian and Frequentist approaches give different conclusions but in practice it doesn’t alter the final decision. Analyses guide decision making but in the end decisions are made on consensus, narrative and intuition. Statistics is only the handmaiden rather than the arbiter. |
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Indeed, but that does not make it right or rational. Bayesian method helps keep things rational. This is pertinent because human brains are terrible at conditional probabilities.
One can always argue that data analysis is usually just window dressing and decision making is mostly political and social. Empirically you would be mostly right if you take that position. One cannot argue against that factual observation.
The more interesting question is, if the decision makers aspire to be rational, which method should they use. I have used frequentist and Bayesian methods both. I made the choice on the basis of the question that needed answering.
For example, when we needed to monitor (and alert on) a time varying probability of error (under time varying sample sizes) -- Bayesian method was a more natural fit than say confidence intervals or hypothesis tests. Bayesian methods directly address the question "What is the probability that error probability is below the threshold now, considering domain expert's opinion about how often it goes below the threshold and how the data has looked in the recent past?"