• RecordNumber
    4004
  • Author

    Tibshirani, Robert

  • Crop_Body
    Robert Tibshirani and Michael Saunders
  • Title of Article

    Sparsity and smoothness via the fused lasso

  • Title Of Journal
    J. R. Statist
  • Publication Year
    2005
  • Volum
    67
  • Issue Number
    1
  • Page
    91-108
  • Keywords
    Fused lasso , Gene expression , Lasso , Least squares regression , Protein mass spectroscopy , Sparse solutions , Support vector classifier
  • Abstract
    The lasso penalizes a least squares regression by the sum of the absolute values (L1-norm) of the coefficients. The form of this penalty encourages sparse solutions (with many coefficients equal to 0).We propose the ‘fused lasso’, a generalization that is designed for problems with features that can be ordered in some meaningful way. The fused lasso penalizes the L1-norm of both the coefficients and their successive differences. Thus it encourages sparsity of the coefficients and also sparsity of their differences—i.e. local constancy of the coefficient profile.The fused lasso is especially useful when the number of features p is much greater than N, the sample size.The technique is also extended to the ‘hinge’ loss function that underlies the support vector classifier.We illustrate the methods on examples from protein mass spectroscopy and gene expression data.