Estimating the false discovery rate of variable selection

William Fithian Speaker
University of California-Berkeley
 
Monday, Aug 4: 9:00 AM - 9:25 AM
Invited Paper Session 
Music City Center 
We introduce a generic estimator for the false discovery rate of any model selection procedure, in common statistical modeling settings including the Gaussian linear model, Gaussian graphical model, and model-X setting. We prove that our method has a conservative (non-negative) bias in finite samples under standard statistical assumptions, and provide a bootstrap method for assessing its standard error. For methods like the Lasso, forward-stepwise regression, and the graphical Lasso, our estimator serves as a valuable companion to cross-validation, illuminating the tradeoff between prediction error and variable selection accuracy as a function of the model complexity parameter. This is joint work with Yixiang Luo and Lihua Lei.

Keywords

FDR estimate