Post-Selection Inference

Posted: 24 Mar 2022

See all articles by Arun K. Kuchibhotla

Arun K. Kuchibhotla

Carnegie Mellon University

John E. Kolassa

Rutgers University, Piscataway

Todd Kuffner

Washington University in St. Louis

Date Written: March 1, 2022

Abstract

We discuss inference after data exploration, with a particular focus on inference after model or variable selection. We review three popular approaches to this problem: sample splitting, simultaneous inference, and conditional selective inference. We explain how each approach works and highlight its advantages and disadvantages. We also provide an illustration of these post-selection inference approaches.

Suggested Citation

Kuchibhotla, Arun K. and Kolassa, John E. and Kuffner, Todd, Post-Selection Inference (March 1, 2022). Annual Review of Statistics and Its Application, Vol. 9, Issue 1, pp. 505-527, 2022, Available at SSRN: https://ssrn.com/abstract=4065377 or http://dx.doi.org/10.1146/annurev-statistics-100421-044639

Arun K. Kuchibhotla (Contact Author)

Carnegie Mellon University ( email )

Pittsburgh, PA 15213-3890
United States

John E. Kolassa

Rutgers University, Piscataway ( email )

Piscataway, NJ
United States

Todd Kuffner

Washington University in St. Louis ( email )

One Brookings Drive
Campus Box 1208
Saint Louis, MO MO 63130-4899
United States

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