EAinference - Estimator Augmentation and Simulation-Based Inference
Estimator augmentation methods for statistical inference
on high-dimensional data, as described in Zhou, Q. (2014)
<arXiv:1401.4425v2> and Zhou, Q. and Min, S. (2017)
<doi:10.1214/17-EJS1309>. It provides several simulation-based
inference methods: (a) Gaussian and wild multiplier bootstrap
for lasso, group lasso, scaled lasso, scaled group lasso and
their de-biased estimators, (b) importance sampler for
approximating p-values in these methods, (c) Markov chain Monte
Carlo lasso sampler with applications in post-selection
inference.