English

Regular Variation in Hilbert Spaces and Principal Component Analysis for Functional Extremes

Statistics Theory 2023-08-03 v1 Functional Analysis Machine Learning Statistics Theory

Abstract

Motivated by the increasing availability of data of functional nature, we develop a general probabilistic and statistical framework for extremes of regularly varying random elements XX in L2[0,1]L^2[0,1]. We place ourselves in a Peaks-Over-Threshold framework where a functional extreme is defined as an observation XX whose L2L^2-norm X\|X\| is comparatively large. Our goal is to propose a dimension reduction framework resulting into finite dimensional projections for such extreme observations. Our contribution is double. First, we investigate the notion of Regular Variation for random quantities valued in a general separable Hilbert space, for which we propose a novel concrete characterization involving solely stochastic convergence of real-valued random variables. Second, we propose a notion of functional Principal Component Analysis (PCA) accounting for the principal `directions' of functional extremes. We investigate the statistical properties of the empirical covariance operator of the angular component of extreme functions, by upper-bounding the Hilbert-Schmidt norm of the estimation error for finite sample sizes. Numerical experiments with simulated and real data illustrate this work.

Keywords

Cite

@article{arxiv.2308.01023,
  title  = {Regular Variation in Hilbert Spaces and Principal Component Analysis for Functional Extremes},
  author = {Stephan Clémençon and Nathan Huet and Anne Sabourin},
  journal= {arXiv preprint arXiv:2308.01023},
  year   = {2023}
}

Comments

29 pages (main paper), 5 pages (appendix)

R2 v1 2026-06-28T11:46:15.734Z