Inference on the Change Point under a High Dimensional Covariance Shift
Conference
65th ISI World Statistics Congress 2025
Format: CPS Abstract - WSC 2025
Keywords: asymptotic distributions, change-point models, high-dimensional, inference, large dimensional covariance model
Session: CPS 6 - High-Dimensional Data and Change Point Detection
Tuesday 7 October 4 p.m. - 5 p.m. (Europe/Amsterdam)
Abstract
We consider the problem of constructing asymptotically valid confidence intervals for the change point in a high-dimensional covariance shift setting. A novel estimator for the change point parameter is developed, and its asymptotic distribution under high dimensional scaling obtained. We establish that the proposed estimator exhibits a sharp rate of convergence. Further, the form of the asymptotic distributions under both a vanishing and a non-vanishing regime of the jump size are characterized. In the former case, it corresponds to the argmax of an asymmetric Brownian motion, while in the latter case to the argmax of an asymmetric random walk. We then obtain the relationship between these distributions, which allows construction of regime (vanishing vs non-vanishing) adaptive confidence intervals. Easy to implement algorithms for the proposed methodology are developed and their performance illustrated on synthetic and real data sets (https://www.jmlr.org/papers/volume24/22-1122/22-1122.pdf).