Error and Inference [on wrong models]
In connection with my series of posts on the book Error and Inference, and my recent collation of those into an arXiv document, Deborah Mayo has started a series of informal seminars at the LSE on the philosophy of errors in statistics and the likelihood principle. and has also posted a long comment on my argument about only using wrong models. (The title is inspired from the Rolling Stones’ “You can’t always get what you want“, very cool!) The discussion about the need or not to take into account all possible models (which is the meaning of the “catchall hypothesis” I had missed while reading the book) shows my point was not clear. I obviously do not claim in the review that all possible models should be accounted for at once, this was on the opposite my understanding of Mayo’s criticism of the Bayesian approach (I thought the following sentence was clear enough: “According to Mayo, this alternative hypothesis should “include all possible rivals, including those not even though of” (p.37)”)! So I see the Bayesian approach as a way to put on the table a collection of reasonable (if all wrong) models and give to those models a posterior probability, with the purpose that improbable ones are eliminated. Therefore, I am in agreement with most of the comments in the post, esp. because this has little to do with Bayesian versus frequentist testing! Even rejecting the less likely models from a collection seems compatible with a Bayesian approach, model averaging is not always an appropriate solution, depending on the loss function!