Collective Outlier Detection and Enumeration with Conformalized Closed Testing
Conference
Regional Statistics Conference 2026
Format: IPS Abstract - Malta 2026
Keywords: algorithms, conformal_inference, machine_learning, multiple_comparisons, nonparametric_methods
Session: IPS 1258 - Advances in Robust Statistical Inference for High-Dimensional Data
Thursday 4 June 11:30 a.m. - 1:10 p.m. (Europe/Malta)
Abstract
I will present a flexible distribution-free method for collective outlier detection and enumeration, designed for situations in which the presence of outliers can be detected powerfully even though their precise identification may be challenging due to the sparsity, weakness, or elusiveness of their signals. This method builds upon recent developments in conformal inference and integrates classical ideas from other areas, in
cluding multiple testing, rank tests, and non-parametric large-sample asymptotics. The key innovation lies in developing a principled and effective approach for automatically choosing the most appropriate machine learning classifier and two-sample testing procedure for a given data set. The performance of our method is investigated through extensive empirical demonstrations, including an analysis of the LHCO high-energy particle collision data set