Support recovery of Gaussian graphical model with false discovery rate control
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Publication:6594996
DOI10.1007/S11424-023-2123-YzbMATH Open1544.62256MaRDI QIDQ6594996
Yan-Hong Liu, Yu-Hao Zhang, Zhaojun Wang
Publication date: 29 August 2024
Published in: Journal of Systems Science and Complexity (Search for Journal in Brave)
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