articleUC BerkeleyJan 1, 2006Closed access

Lasso-type recovery of sparse representations for high-dimensional data

NMNicolai MeinshausenBYBin Yu

Abstract

The Lasso is an attractive technique for regularization and variable selection for high-dimensional data, where the number of predictor variables pn is potentially much larger than the number of samples n. However, it was recently discovered that the sparsity pattern of the Lasso estimator can only be asymptotically identical to the true sparsity pattern if the design matrix satisfies the so-called irrepresentable condition. The latter condition can easily be violated in the presence of highly correlated variables. Here we examine the behavior of the Lasso estimators if the irrepresentable condition is relaxed. Even though the Lasso cannot recover the correct sparsity pattern, we show that the estimator is…

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Authors

2
  • NM
    Nicolai MeinshausenCorresponding
  • BY
    Bin Yu

Topics & keywords

Keywords
  • Lasso (programming language)
  • Mathematics
  • Estimator
  • Regularization (linguistics)
  • Feature selection
  • Elastic net regularization
  • Design matrix
  • Applied mathematics
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