Exact Post-selection Inference for Forward Stepwise and Least Angle Regression

نویسندگان

  • Jonathan Taylor
  • Richard Lockhart
  • Ryan J. Tibshirani
  • Robert Tibshirani
چکیده

In this paper we propose new inference tools for forward stepwise and least angle regression. We first present a general scheme to perform valid inference after any selection event that can be characterized as the observation vector y falling into some polyhedral set. This framework then allows us to derive conditional (post-selection) hypothesis tests at any step of the forward stepwise and least angle regression procedures. We derive an exact null distribution for our proposed test statistics in finite samples, yielding p-values with exact type I error control. The tests can also be inverted to produce confidence intervals for appropriate underlying regression parameters. Application of this framework to general likelihood-based regression models (e.g., generalized linear models and the Cox model) is also discussed.

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تاریخ انتشار 2014