We propose a residual and wild bootstrap methodology for individual and
simultaneous inference in high-dimensional linear models with possibly
non-Gaussian and heteroscedastic errors. We establish asymptotic consistency
for simultaneous inference for parameters in groups G, where p≫n, s0=o(n1/2/{log(p)log(∣G∣)1/2}) and log(∣G∣)=o(n1/7), with
p the number of variables, n the sample size and s0 denoting the
sparsity. The theory is complemented by many empirical results. Our proposed
procedures are implemented in the R-package hdi