Jan. 1, 2023, midnight | Snigdha Panigrahi, Peter W MacDonald, Daniel Kessler

JMLR www.jmlr.org

After selection with the Group LASSO (or generalized variants such as the overlapping, sparse, or standardized Group LASSO), inference for the selected parameters is unreliable in the absence of adjustments for selection bias. In the penalized Gaussian regression setup, existing approaches provide adjustments for selection events that can be expressed as linear inequalities in the data variables. Such a representation, however, fails to hold for selection with the Group LASSO and substantially obstructs the scope of subsequent post-selective inference. Key …

bias data effects events generalized inference lasso linear regression representation setup variables variants

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