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Tuning parameter selection in fused lasso signal approximator with false discovery rate control
- Son, Won;
- Lim, Johan;
- Yu, Donghyeon
WEB OF SCIENCE
4SCOPUS
5초록
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
- 제목
- Tuning parameter selection in fused lasso signal approximator with false discovery rate control
- 저자
- Son, Won; Lim, Johan; Yu, Donghyeon
- 발행일
- 2023-09
- 유형
- Article
- 권
- 37
- 호
- 3
- 페이지
- 463 ~ 492