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High-dimensional simultaneous inference with the bootstrap

Abstract

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 GG, where pnp \gg n, s0=o(n1/2/{log(p)log(G)1/2})s_0 = o(n^{1/2}/\{\log(p) \log(|G|)^{1/2}\}) and log(G)=o(n1/7)\log(|G|) = o(n^{1/7}), with pp the number of variables, nn the sample size and s0s_0 denoting the sparsity. The theory is complemented by many empirical results. Our proposed procedures are implemented in the R-package hdi

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