Uniform asymptotic inference and the bootstrap after model selection
Uniform asymptotic inference and the bootstrap after model selection
Recently, Tibshirani et al. [J. Amer. Statist. Assoc. 111 (2016) 600–620] proposed a method for making inferences about parameters defined by model selection, in a typical regression setting with normally distributed errors. Here, we study the large sample properties of this method, without assuming normality. We prove that the test …