稳健最窄显著性追踪:中位数多重变点的推断

Robust Narrowest Significance Pursuit: Inference for Multiple Change-Points in the Median

Journal of Business & Economic Statistics · 2024
被引 10 · 同刊同年前 7%
人大 AABS 4

中文导读

提出稳健最窄显著性追踪方法,用于在数据序列中检测中位数变点,在预设全局显著性水平下保证覆盖,适用于异质性和重尾数据。

Abstract

We propose Robust Narrowest Significance Pursuit (RNSP), a methodology for detecting localized regions in data sequences which each must contain a change-point in the median, at a prescribed global significance level. RNSP works by fitting the postulated constant model over many regions of the data using a new sign-multiresolution sup-norm-type loss, and greedily identifying the shortest intervals on which the constancy is significantly violated. By working with the signs of the data around fitted model candidates, RNSP fulfils its coverage promises under minimal assumptions, requiring only sign-symmetry and serial independence of the signs of the true residuals. In particular, it permits their heterogeneity and arbitrarily heavy tails. The intervals of significance returned by RNSP have a finite-sample character, are unconditional in nature and do not rely on any assumptions on the true signal. Code implementing RNSP is available at https://github.com/pfryz/nsp.

稳健窄意义追踪中位数多变点推断符号多分辨率损失全局显著性水平