• RecordNumber
    3998
  • Author

    Wasserman, Larry

  • Crop_Body
    Larry Wasserman and Kathryn Roeder
  • Title of Article

    HIGH DIMENSIONAL VARIABLE selec‎tION

  • Title Of Journal
    Ann Stat
  • Publication Year
    2009
  • Volum
    1
  • Issue Number
    37
  • Page
    2178–2201
  • Keywords
    Lasso , Stepwise Regression , Sparsity
  • Abstract
    This paper explores the following question: what kind of statistical guarantees can be given when doing variable selection in high dimensional models? In particular, we look at the error rates and power of some multi-stage regression methods. In the first stage we fit a set of candidate models. In the second stage we select one model by cross-validation. In the third stage we use hypothesis testing to eliminate some variables. We refer to the first two stages as “screening” and the last stage as “cleaning.” We consider three screening methods: the lasso, marginal regression, and forward stepwise regression. Our method gives consistent variable selection under certain conditions.