Skip to Main content Skip to Navigation
Journal articles

Estimating minimum effect with outlier selection

Abstract : We introduce one-sided versions of Huber's contamination model, in which corrupted samples tend to take larger values than uncorrupted ones. Two intertwined problems are addressed: estimation of the mean of the uncorrupted samples (minimum effect) and selection of the corrupted samples (outliers). Regarding estimation of the minimum effect, we derive the minimax risks and introduce estimators that are adaptive with respect to the unknown number of contaminations. The optimal convergence rates differ from the ones in the classical Huber contamination model. This fact uncovers the effect of the one-sided structural assumption of the contaminations. As for the problem of selecting the outliers, we formulate the problem in a multiple testing framework for which the location and scaling of the null hypotheses are unknown. We rigorously prove that estimating the null hypothesis while maintaining a theoretical guarantee on the amount of the falsely selected outliers is possible, both through false discovery rate (FDR) and through post hoc bounds. As a by-product, we address a long-standing open issue on FDR control under equi-correlation, which reinforces the interest of removing dependency in such a setting.
Document type :
Journal articles
Complete list of metadata

https://hal.inrae.fr/hal-03173293
Contributor : Christelle Raynaud <>
Submitted on : Thursday, March 18, 2021 - 1:23:36 PM
Last modification on : Wednesday, June 2, 2021 - 4:26:43 PM

Links full text

Identifiers

Citation

Alexandra Carpentier, Sylvain Delattre, Etienne Roquain, Nicolas Verzelen. Estimating minimum effect with outlier selection. Annals of Statistics, Institute of Mathematical Statistics, 2021, 49 (1), pp.272-294. ⟨10.1214/20-AOS1956⟩. ⟨hal-03173293⟩

Share

Metrics

Record views

66