FDR-control in multiscale change-point segmentation

2016 | journal article. A publication with affiliation to the University of Göttingen.

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​FDR-control in multiscale change-point segmentation​
Li, H. ; Munk, A.   & Sieling, H. ​ (2016) 
Electronic Journal of Statistics10(1) pp. 918​-959​.​ DOI: https://doi.org/10.1214/16-EJS1131 

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Authors
Li, Housen ; Munk, Axel ; Sieling, Hannes 
Abstract
Fast multiple change-point segmentation methods, which additionally provide faithful statistical statements on the number, locations and sizes of the segments, have recently received great attention. In this paper, we propose a multiscale segmentation method, FDRSeg, which controls the false discovery rate (FDR) in the sense that the number of false jumps is bounded linearly by the number of true jumps. In this way, it adapts the detection power to the number of true jumps. We prove a non-asymptotic upper bound for its FDR in a Gaussian setting, which allows to calibrate the only parameter of FDRSeg properly. Moreover, we show that FDRSeg estimates change-point locations, as well as the signal, in a uniform sense at optimal minimax convergence rates up to a log-factor. The latter is w.r.t. L-p-risk, p >= 1, over classes of step functions with bounded jump sizes and either bounded, or even increasing, number of change-points. FDRSeg can be efficiently computed by an accelerated dynamic program; its computational complexity is shown to be linear in the number of observations when there are many change-points. The performance of the proposed method is examined by comparisons with some state of the art methods on both simulated and real datasets. An R-package is available online.
Issue Date
2016
Journal
Electronic Journal of Statistics 
Project
RTG 2088: Research Training Group 2088 Discovering structure in complex data: Statistics meets Optimization and Inverse Problems 
eISSN
1935-7524
ISSN
1935-7524
Language
English

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