Multiple testing for outlier detection in functional data
Abstract
We propose a novel procedure for outlier detection in functional data, in a semi-supervised framework. As the data is functional, we consider the coefficients obtained after projecting the observations onto orthonormal bases (wavelet, PCA). A multiple testing procedure based on the two-sample test is defined in order to highlight the levels of the coefficients on which the outliers appear as significantly different to the normal data. The selected coefficients are then called features for the outlier detection, on which we compute the Local Outlier Factor to highlight the outliers. This procedure to select the features is applied on simulated data that mimic the behaviour of space telemetries, and compared with existing dimension reduction techniques.
Cite
@article{arxiv.1712.04775,
title = {Multiple testing for outlier detection in functional data},
author = {Clémentine Barreyre and Béatrice Laurent and Jean-Michel Loubes and Bertrand Cabon and Loïc Boussouf},
journal= {arXiv preprint arXiv:1712.04775},
year = {2017}
}