A Survey of L-1 Regression
L regularization, or regularization with an L penalty, is a popular idea in statistics and machine learning. This paper reviews the concept and application of L regularization for regression. It is not our aim to present a comprehensive list of the utilities of the L penalty in the regression settin...
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Format: | Journal article |
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2013
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author | Vidaurre, D Bielza, C Larranaga, P |
author_facet | Vidaurre, D Bielza, C Larranaga, P |
author_sort | Vidaurre, D |
collection | OXFORD |
description | L regularization, or regularization with an L penalty, is a popular idea in statistics and machine learning. This paper reviews the concept and application of L regularization for regression. It is not our aim to present a comprehensive list of the utilities of the L penalty in the regression setting. Rather, we focus on what we believe is the set of most representative uses of this regularization technique, which we describe in some detail. Thus, we deal with a number of L-regularized methods for linear regression, generalized linear models, and time series analysis. Although this review targets practice rather than theory, we do give some theoretical details about L-penalized linear regression, usually referred to as the least absolute shrinkage and selection operator (lasso). © 2013 International Statistical Institute. |
first_indexed | 2024-03-07T05:54:29Z |
format | Journal article |
id | oxford-uuid:ea0b4590-6da1-4191-9027-63cacee321d7 |
institution | University of Oxford |
last_indexed | 2024-03-07T05:54:29Z |
publishDate | 2013 |
record_format | dspace |
spelling | oxford-uuid:ea0b4590-6da1-4191-9027-63cacee321d72022-03-27T10:58:45ZA Survey of L-1 RegressionJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:ea0b4590-6da1-4191-9027-63cacee321d7Symplectic Elements at Oxford2013Vidaurre, DBielza, CLarranaga, PL regularization, or regularization with an L penalty, is a popular idea in statistics and machine learning. This paper reviews the concept and application of L regularization for regression. It is not our aim to present a comprehensive list of the utilities of the L penalty in the regression setting. Rather, we focus on what we believe is the set of most representative uses of this regularization technique, which we describe in some detail. Thus, we deal with a number of L-regularized methods for linear regression, generalized linear models, and time series analysis. Although this review targets practice rather than theory, we do give some theoretical details about L-penalized linear regression, usually referred to as the least absolute shrinkage and selection operator (lasso). © 2013 International Statistical Institute. |
spellingShingle | Vidaurre, D Bielza, C Larranaga, P A Survey of L-1 Regression |
title | A Survey of L-1 Regression |
title_full | A Survey of L-1 Regression |
title_fullStr | A Survey of L-1 Regression |
title_full_unstemmed | A Survey of L-1 Regression |
title_short | A Survey of L-1 Regression |
title_sort | survey of l 1 regression |
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