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Authors:
(1) Ulysse Gazin, Universit´e Paris Cit´e and Sorbonne Universit´e, CNRS, Laboratoire de Probabilit´es, Statistique et Mod´elisation, (2) Gilles Blanchard, Universit´e Paris Saclay, Institut Math´ematique d’Orsay, (3) Etienne Roquain, Sorbonne Universit´e and Universit´e Paris Cit´e, CNRS, Laboratoire de Probabilit´es, Statistique et Mod´elisation.
Proof sketch. The conditional distribution of pi only depends on score ordering which is unambiguous due to (NoTies), and is thus invariant by monotone transformation of the scores by (1 − F). Writing explicitly the cdf of pi from the uniformly distributed transformed scores yields (4). See Appendix C.1 for details.
In the literature, such a result is used to control the conditional failure probability P(p1 ≤ α| Dcal ) around its expectation (which is ensured to be smaller than, and close to, α) with concentration inequalities valid under an i.i.d. assumption (Bates et al., 2023; Sarkar and Kuchibhotla, 2023).
Proposition 2.2. Assume (Exch) and (NoTies), then the family of p-values (pi , i ∈ JmK) given by (1) has joint distribution Pn,m, which is defined by (5)-(6) and is independent of the specific score distribution.
The next proposition is an alternative and useful characterization of the distribution Pn,m.
Proposition 2.3 is proved in Appendix A, where several explicit formulas for Pn,m are also provided. We also show that this generalizes the previous work of Marques F. (2023)
Comparing Proposition 2.1 and Proposition 2.2, we see that having i.i.d. scores is more favorable because guarantees are valid conditionally on Dcal (with an explicit expression for U = U(Dcal )). However, as we will see in Sections 3 and 4, the class of exchangeable scores is much more flexible and includes adaptive scores, which can improve substantially inference sharpness in specific situations. For this reason, we work with the unconditional distribution as in Proposition 2.2 in the sequel.