The Complete Lasso Tradeoff Diagram
July 21, 2020 Β· Declared Dead Β· π NeurIPS 2020
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Authors
Hua Wang, Yachong Yang, Zhiqi Bu, Weijie J. Su
arXiv ID
2007.11078
Category
math.ST
Cross-listed
cs.IT
Citations
0
Venue
NeurIPS 2020
Last Checked
4 months ago
Abstract
A fundamental problem in the high-dimensional regression is to understand the tradeoff between type I and type II errors or, equivalently, false discovery rate (FDR) and power in variable selection. To address this important problem, we offer the first complete tradeoff diagram that distinguishes all pairs of FDR and power that can be asymptotically realized by the Lasso with some choice of its penalty parameter from the remaining pairs, in a regime of linear sparsity under random designs. The tradeoff between the FDR and power characterized by our diagram holds no matter how strong the signals are. In particular, our results improve on the earlier Lasso tradeoff diagram of arXiv:1511.01957 by recognizing two simple but fundamental constraints on the pairs of FDR and power. The improvement is more substantial when the regression problem is above the Donoho--Tanner phase transition. Finally, we present extensive simulation studies to confirm the sharpness of the complete Lasso tradeoff diagram.
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