Look-Ahead Screening Rules for the Lasso

05/12/2021
by   Johan Larsson, et al.
0

The lasso is a popular method to induce shrinkage and sparsity in the solution vector (coefficients) of regression problems, particularly when there are many predictors relative to the number of observations. Solving the lasso in this high-dimensional setting can, however, be computationally demanding. Fortunately, this demand can be alleviated via the use of screening rules that discard predictors prior to fitting the model, leading to a reduced problem to be solved. In this paper, we present a new screening strategy: look-ahead screening. Our method uses safe screening rules to find a range of penalty values for which a given predictor cannot enter the model, thereby screening predictors along the remainder of the path. In experiments we show that these look-ahead screening rules outperform the active warm-start version of the Gap Safe rules.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/27/2021

The Hessian Screening Rule

Predictor screening rules, which discard predictors from the design matr...
research
11/09/2010

Strong rules for discarding predictors in lasso-type problems

We consider rules for discarding predictors in lasso regression and rela...
research
12/01/2017

A Pliable Lasso

We propose a generalization of the lasso that allows the model coefficie...
research
05/07/2020

The Strong Screening Rule for SLOPE

Extracting relevant features from data sets where the number of observat...
research
10/26/2017

Joint Screening Tests for LASSO

This paper focusses on "safe" screening techniques for the LASSO problem...
research
10/25/2014

Screening Rules for Overlapping Group Lasso

Recently, to solve large-scale lasso and group lasso problems, screening...
research
09/06/2020

Screening Rules and its Complexity for Active Set Identification

Screening rules were recently introduced as a technique for explicitly i...

Please sign up or login with your details

Forgot password? Click here to reset