Sparsity oracle inequalities for the Lasso

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Abstract

This paper studies oracle properties of l1-penalized least squares in nonparametric regression setting with random design. We show that the penalized least squares estimator satisfies sparsity oracle inequalities, i.e., bounds in terms of the number of non-zero components of the oracle vector. The results are valid even when the dimension of the model is (much) larger than the sample size and the regression matrix is not positive definite. They can be applied to high-dimensional linear regression, to nonparametric adaptive regression estimation and to the problem of aggregation of arbitrary estimators.

Original languageEnglish
Pages (from-to)169-194
Number of pages26
JournalElectronic Journal of Statistics
Volume1
DOIs
Publication statusPublished - 1 Jan 2007

Keywords

  • Adaptive estimation
  • Aggregation
  • Dimension reduction
  • Lasso
  • Mutual coherence
  • Nonparametric regression
  • Oracle inequalities
  • Penalized least squares
  • Sparsity

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