English

Change-point detection in high-dimensional covariance structure

Statistics Theory 2020-07-30 v6 Statistics Theory

Abstract

In this paper we introduce a novel approach for an important problem of break detection. Specifically, we are interested in detection of an abrupt change in the covariance structure of a high-dimensional random process -- a problem, which has applications in many areas e.g., neuroimaging and finance. The developed approach is essentially a testing procedure involving a choice of a critical level. To that end a non-standard bootstrap scheme is proposed and theoretically justified under mild assumptions. Theoretical study features a result providing guaranties for break detection. All the theoretical results are established in a high-dimensional setting (dimensionality pnp \gg n). Multiscale nature of the approach allows for a trade-off between sensitivity of break detection and localization. The approach can be naturally employed in an on-line setting. Simulation study demonstrates that the approach matches the nominal level of false alarm probability and exhibits high power, outperforming a recent approach.

Keywords

Cite

@article{arxiv.1610.03783,
  title  = {Change-point detection in high-dimensional covariance structure},
  author = {Valeriy Avanesov and Nazar Buzun},
  journal= {arXiv preprint arXiv:1610.03783},
  year   = {2020}
}

Comments

Acknowledgement correction

R2 v1 2026-06-22T16:18:57.126Z