A Scale-Free Approach for False Discovery Rate Control in Generalized Linear Models
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Publication:6077542
DOI10.1080/01621459.2023.2165930arXiv2007.01237OpenAlexW4287728453MaRDI QIDQ6077542
Unnamed Author, Chenguang Dai, Xin Xing, Jun S. Liu
Publication date: 18 October 2023
Published in: Journal of the American Statistical Association (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/2007.01237
Related Items (8)
Comment on “A Scale-Free Approach for False Discovery Rate Control in Generalized Linear Models” by Chengguang Dai, Buyu Lin, Xin Xing, and Jun S. Liu ⋮ Discussion on: “A Scale-Free Approach for False Discovery Rate Control in Generalized Linear Models” by Dai, Lin, Zing, Liu ⋮ Discussion of “A Scale-Free Approach for False Discovery Rate Control in Generalized Linear Models” ⋮ Discussion of “A Scale-Free Approach for False Discovery Rate Control in Generalized Linear Models” by Chenguang Dai, Buyu Lin, Xin Xing, and Jun S. Liu ⋮ Comments on “A Scale-Free Approach for False Discovery Rate Control in Generalized Linear Models” ⋮ Rejoinder: A Scale-free Approach for False Discovery Rate Control in Generalized Linear Models ⋮ False Discovery Rate Control via Data Splitting ⋮ StarTrek: combinatorial variable selection with false discovery rate control
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