The Group Lasso for Logistic Regression

Board of the Swiss Federal Institutes of Technology · ETH Zurich

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Abstract

Summary The group lasso is an extension of the lasso to do variable selection on (predefined) groups of variables in linear regression models. The estimates have the attractive property of being invariant under groupwise orthogonal reparameterizations. We extend the group lasso to logistic regression models and present an efficient algorithm, that is especially suitable for high dimensional problems, which can also be applied to generalized linear models to solve the corresponding convex optimization problem. The group lasso estimator for logistic regression is shown to be statistically consistent even if the number of predictors is much larger than sample size but with sparse true underlying structure. We…

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Authors

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Topics & keywords

Keywords
  • Lasso (programming language)
  • Logistic regression
  • Mathematics
  • Estimator
  • Elastic net regularization
  • Linear regression
  • Group selection
  • Feature selection
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