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Main Authors: Zeng, Yaohui, Yang, Tianbao, Breheny, Patrick
Format: Preprint
Published: 2017
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Online Access:https://arxiv.org/abs/1704.08742
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author Zeng, Yaohui
Yang, Tianbao
Breheny, Patrick
author_facet Zeng, Yaohui
Yang, Tianbao
Breheny, Patrick
contents The lasso model has been widely used for model selection in data mining, machine learning, and high-dimensional statistical analysis. However, with the ultrahigh-dimensional, large-scale data sets now collected in many real-world applications, it is important to develop algorithms to solve the lasso that efficiently scale up to problems of this size. Discarding features from certain steps of the algorithm is a powerful technique for increasing efficiency and addressing the Big Data challenge. In this paper, we propose a family of hybrid safe-strong rules (HSSR) which incorporate safe screening rules into the sequential strong rule (SSR) to remove unnecessary computational burden. In particular, we present two instances of HSSR, namely SSR-Dome and SSR-BEDPP, for the standard lasso problem. We further extend SSR-BEDPP to the elastic net and group lasso problems to demonstrate the generalizability of the hybrid screening idea. Extensive numerical experiments with synthetic and real data sets are conducted for both the standard lasso and the group lasso problems. Results show that our proposed hybrid rules can substantially outperform existing state-of-the-art rules.
format Preprint
id arxiv_https___arxiv_org_abs_1704_08742
institution arXiv
publishDate 2017
record_format arxiv
spellingShingle Hybrid safe-strong rules for efficient optimization in lasso-type problems
Zeng, Yaohui
Yang, Tianbao
Breheny, Patrick
Machine Learning
Computation
The lasso model has been widely used for model selection in data mining, machine learning, and high-dimensional statistical analysis. However, with the ultrahigh-dimensional, large-scale data sets now collected in many real-world applications, it is important to develop algorithms to solve the lasso that efficiently scale up to problems of this size. Discarding features from certain steps of the algorithm is a powerful technique for increasing efficiency and addressing the Big Data challenge. In this paper, we propose a family of hybrid safe-strong rules (HSSR) which incorporate safe screening rules into the sequential strong rule (SSR) to remove unnecessary computational burden. In particular, we present two instances of HSSR, namely SSR-Dome and SSR-BEDPP, for the standard lasso problem. We further extend SSR-BEDPP to the elastic net and group lasso problems to demonstrate the generalizability of the hybrid screening idea. Extensive numerical experiments with synthetic and real data sets are conducted for both the standard lasso and the group lasso problems. Results show that our proposed hybrid rules can substantially outperform existing state-of-the-art rules.
title Hybrid safe-strong rules for efficient optimization in lasso-type problems
topic Machine Learning
Computation
url https://arxiv.org/abs/1704.08742