Estimation and Uniform Inference in Sparse High-Dimensional Additive Models
Methodology
2024-04-24 v2 Econometrics
Machine Learning
Abstract
We develop a novel method to construct uniformly valid confidence bands for a nonparametric component in the sparse additive model in a high-dimensional setting. Our method integrates sieve estimation into a high-dimensional Z-estimation framework, facilitating the construction of uniformly valid confidence bands for the target component . To form these confidence bands, we employ a multiplier bootstrap procedure. Additionally, we provide rates for the uniform lasso estimation in high dimensions, which may be of independent interest. Through simulation studies, we demonstrate that our proposed method delivers reliable results in terms of estimation and coverage, even in small samples.
Cite
@article{arxiv.2004.01623,
title = {Estimation and Uniform Inference in Sparse High-Dimensional Additive Models},
author = {Philipp Bach and Sven Klaassen and Jannis Kueck and Martin Spindler},
journal= {arXiv preprint arXiv:2004.01623},
year = {2024}
}