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DOI: 10.1111/j.1467-9868.2005.00503.x
¤ OpenAccess: Green
This work has “Green” OA status. This means it may cost money to access on the publisher landing page, but there is a free copy in an OA repository.

Regularization and Variable Selection Via the Elastic Net

Hui Zou,Trevor Hastie

Elastic net regularization
Lasso (programming language)
Regularization (linguistics)
2005
Summary We propose the elastic net, a new regularization and variable selection method. Real world data and a simulation study show that the elastic net often outperforms the lasso, while enjoying a similar sparsity of representation. In addition, the elastic net encourages a grouping effect, where strongly correlated predictors tend to be in or out of the model together. The elastic net is particularly useful when the number of predictors (p) is much bigger than the number of observations (n). By contrast, the lasso is not a very satisfactory variable selection method in the p≫n case. An algorithm called LARS-EN is proposed for computing elastic net regularization paths efficiently, much like algorithm LARS does for the lasso.
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    Regularization and Variable Selection Via the Elastic Net” is a paper by Hui Zou Trevor Hastie published in 2005. It has an Open Access status of “green”. You can read and download a PDF Full Text of this paper here.