Tuning parameter selection in fused lasso signal approximator with false discovery rate control

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4
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5

초록

The fused lasso signal approximator (FLSA) obtains sparse and blocky estimates of the piecewise constant mean model with two tuning pa-rameters for the total variation (TV)-norm and l(1)-norm penalties. The FLSA can be divided into the fusion procedure for finding block structures and the soft-thresholding procedure for identifying non-zero block signals. In this pa-per, we first prove that Bayesian information criterion-type criteria guarantee that the FLSA obtains the minimally over-fitted block estimates. Second, we propose a new procedure to select the soft-thresholding level that controls the false discovery rate of the estimated signals for identifying non-zero signals under the aimed level based on the preliminary test statistics. We show that the soft-thresholded fusion estimators improve the preliminary test statistics regarding false discovery rates. We apply the FLSA with the proposed selec-tion procedure to the COVID-19 pandemic dataset in Korea to identify the change points.

키워드

False discovery ratefused lasso signal approximatorgeneralized information criteriapiecewise constant mean modeltuning parameter selectionINFORMATION CRITERIONBINARY SEGMENTATIONVARIABLE SELECTIONPATH ALGORITHMRECOVERYNUMBER
제목
Tuning parameter selection in fused lasso signal approximator with false discovery rate control
저자
Son, WonLim, JohanYu, Donghyeon
DOI
10.1214/23-BJPS577
발행일
2023-09
유형
Article
저널명
Brazilian Journal of Probability and Statistics
37
3
페이지
463 ~ 492