Aggregated Sure Independence Screening for Variable Selection with Interaction Structures
Abstract
A new method called the aggregated sure independence screening is proposed for the computational challenges in variable selection of interactions when the number of explanatory variables is much higher than the number of observations (i.e., ). In this problem, the two main challenges are the strong hierarchical restriction and the number of candidates for the main effects and interactions. If is a few hundred and is ten thousand, then the memory needed for the augmented matrix of the full model is more than in size, beyond the memory capacity of a personal computer. This issue can be solved by our proposed method but not by our competitors. Two advantages are that the proposed method can include important interactions even if the related main effects are weak or absent, and it can be combined with an arbitrary variable selection method for interactions. The research addresses the main concern for variable selection of interactions because it makes previous methods applicable to the case when is extremely large.
Cite
@article{arxiv.2407.03558,
title = {Aggregated Sure Independence Screening for Variable Selection with Interaction Structures},
author = {Tonglin Zhang},
journal= {arXiv preprint arXiv:2407.03558},
year = {2024}
}
Comments
Preprint