Multiscale quantile segmentation

2019-02-25 | preprint

Jump to: Cite & Linked | Documents & Media | Details | Version history

Cite this publication

​Multiscale quantile segmentation​
Vanegas, L. J.; Behr, M.& Munk, A. ​ (2019)

Documents & Media

License

GRO License GRO License

Details

Authors
Vanegas, Laura Jula; Behr, Merle; Munk, Axel 
Abstract
We introduce a new methodology for analyzing serial data by quantile regression assuming that the underlying quantile function consists of constant segments. The procedure does not rely on any distributional assumption besides serial independence. It is based on a multiscale statistic, which allows to control the (finite sample) probability for selecting the correct number of segments S at a given error level, which serves as a tuning parameter. For a proper choice of this parameter, this tends exponentially fast to the true S, as sample size increases. We further show that the location and size of segments are estimated at minimax optimal rate (compared to a Gaussian setting) up to a log-factor. Thereby, our approach leads to (asymptotically) uniform confidence bands for the entire quantile regression function in a fully nonparametric setup. The procedure is efficiently implemented using dynamic programming techniques with double heap structures, and software is provided. Simulations and data examples from genetic sequencing and ion channel recordings confirm the robustness of the proposed procedure, which at the same hand reliably detects changes in quantiles from arbitrary distributions with precise statistical guarantees.
Issue Date
25-February-2019
Project
EXC 2067: Multiscale Bioimaging 
Working Group
RG Munk 

Reference

Citations