Martin Voigt Vejling, Aalborg University: Conformal multiple Monte Carlo testing with a view to spatial statistics
Översikt
- Datum:Startar 21 november 2024, 11:00Slutar 21 november 2024, 11:45
- Plats:MV:L14, Chalmers tvärgata 3
- Språk:Engelska
Abstrakt finns enbart på engelska: Monte Carlo tests are popular for their convenience, as they allow the computation of valid p-values even when test statistics with known and tractable distributions are unavailable. When performing multiple Monte Carlo tests, it is essential to adjust the testing procedure to maintain control of the type I error, and some of such techniques pose requirements on the joint distribution of the p-values, for instance independence. A straightforward approach to get independent p-values, is to compute the p-values for each hypothesis in parallel, however, this imposes a substantial computational burden. We highlight in this work that the problem of testing multiple data samples against the same null hypothesis is an instance of conformal outlier detection. Leveraging this insight enables a more efficient multiple Monte Carlo testing procedure, avoiding excessive simulations while still ensuring exact control over the false discovery rate. Through numerical experiments on point patterns we investigate the performance of this proposed conformal multiple Monte Carlo testing (CMMCTest) procedure.