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分布函数检验与置信带的新方法

A new approach to tests and confidence bands for distribution functions

Annals of Statistics · 2023
被引 3
ABS 4*

中文导读

提出基于重对数律的拟合优度检验和置信带,在保留尾部高精度的同时显著提升中心区域表现,适用于稀疏信号检测。

Abstract

We introduce new goodness-of-fit tests and corresponding confidence bands for distribution functions. They are inspired by multiscale methods of testing and based on refined laws of the iterated logarithm for the normalized uniform empirical process Un(t)/ t(1−t) and its natural limiting process, the normalized Brownian bridge process U(t)/ t(1−t). The new tests and confidence bands refine the procedures of Berk and Jones (1979) and Owen (1995). Roughly speaking, the high power and accuracy of the latter methods in the tail regions of distributions are essentially preserved while gaining considerably in the central region. The goodness-of-fit tests perform well in signal detection problems involving sparsity, as in Ingster (1997), Donoho and Jin (2004) and Jager and Wellner (2007), but also under contiguous alternatives. Our analysis of the confidence bands sheds new light on the influence of the underlying ϕ-divergences.

统计学非参数检验拟合优度检验置信带信号检测