Post-selection Inference with HSIC-Lasso

2021-07-19·
Tobias Freidling
Tobias Freidling
,
Benjamin Poignard
,
Héctor Climente-González
,
Makoto Yamada
· 0 min read
Abstract
Detecting influential features in non-linear and/or high-dimensional data is a challenging and increasingly important task in machine learning. Variable selection methods have thus been gaining much attention as well as post-selection inference. Indeed, the selected features can be significantly flawed when the selection procedure is not accounted for. We propose a selective inference procedure using the so-called model-free "HSIC-Lasso" based on the framework of truncated Gaussians combined with the polyhedral lemma. We then develop an algorithm, which allows for low computational costs and provides a selection of the regularisation parameter. The performance of our method is illustrated by both artificial and real-world data based experiments, which emphasise a tight control of the type-I error, even for small sample sizes.
Type
Publication
International Conference on Machine Learning 2021