Abstract
This article argues that common intuitions regarding (a) the specialness of ‘use-novel’
data for confirmation and (b) that this specialness implies the ‘no-double-counting rule’,
which says that data used in ‘constructing’ (calibrating) a model cannot also play a role in
confirming the model’s predictions, are too crude. The intuitions in question are pertinent
in all the sciences, but we appeal to a climate science case study to illustrate what is at
stake. Our strategy is to analyse the intuitive claims in light of prominent accounts of
confirmation of model predictions. We show that on the Bayesian account of confirmation, and also on the standard classical hypothesis-testing account, claims (a) and (b) are
not generally true; but for some select cases, it is possible to distinguish data used for
calibration from use-novel data, where only the latter confirm. The more specialized
classical model-selection methods, on the other hand, uphold a nuanced version of
claim (a), but this comes apart from (b), which must be rejected in favour of a more
refined account of the relationship between calibration and confirmation. Thus, depending on the framework of confirmation, either the scope or the simplicity of the intuitive position must be revised.