Quantifying the uncertainty in penalized regression under group sparsity is
an important open question. We establish, under a high-dimensional scaling, the
asymptotic validity of a modified parametric bootstrap method for the group
lasso, assuming a Gaussian error model and mild conditions on the design matrix
and the true coefficients. Simulation of bootstrap samples provides
simultaneous inferences on large groups of coefficients. Through extensive
numerical comparisons, we demonstrate that our bootstrap method performs much
better than popular competitors, highlighting its practical utility. The
theoretical result is generalized to other block norm penalization and
sub-Gaussian errors, which further broadens the potential applications.Comment: 44 page