English

Change-point Inference for High-dimensional Heteroscedastic Data

Methodology 2023-11-17 v1

Abstract

We propose a bootstrap-based test to detect a mean shift in a sequence of high-dimensional observations with unknown time-varying heteroscedasticity. The proposed test builds on the U-statistic based approach in Wang et al. (2022), targets a dense alternative, and adopts a wild bootstrap procedure to generate critical values. The bootstrap-based test is free of tuning parameters and is capable of accommodating unconditional time varying heteroscedasticity in the high-dimensional observations, as demonstrated in our theory and simulations. Theoretically, we justify the bootstrap consistency by using the recently proposed unconditional approach in Bucher and Kojadinovic (2019). Extensions to testing for multiple change-points and estimation using wild binary segmentation are also presented. Numerical simulations demonstrate the robustness of the proposed testing and estimation procedures with respect to different kinds of time-varying heteroscedasticity.

Keywords

Cite

@article{arxiv.2311.09419,
  title  = {Change-point Inference for High-dimensional Heteroscedastic Data},
  author = {Teng Wu and Stanislav Volgushev and Xiaofeng Shao},
  journal= {arXiv preprint arXiv:2311.09419},
  year   = {2023}
}

Comments

Accepted by Electronic Journal of Statistics

R2 v1 2026-06-28T13:22:44.243Z