Safe Screening Rules for Generalized Double Sparsity Learning
Abstract
In a high-dimensional setting, sparse model has shown its power in computational and statistical efficiency. We consider variables selection problem with a broad class of simultaneous sparsity regularization, enforcing both feature-wise and group-wise sparsity at the same time. The analysis leverages an introduction of -norm in vector space, which is proved to has close connection with the mixture regularization and naturally leads to a dual formulation. Properties of primal/dual optimal solution and optimal values are discussed, which motivates the design of screening rules. We several fast safe screening rules in the general framework, rules that discard inactive features/groups at an early stage that are guaranteed to be inactive in the exact solution, leading to a significant gain in computation speed.
Cite
@article{arxiv.2006.06172,
title = {Safe Screening Rules for Generalized Double Sparsity Learning},
author = {Xinyu Zhang},
journal= {arXiv preprint arXiv:2006.06172},
year = {2021}
}
Comments
merge with Error Bounds for Generalized Group Sparsity