Optimality & Causal Inference

Edward Kennedy Chair
 
Edward Kennedy Organizer
 
Thursday, Aug 7: 8:30 AM - 10:20 AM
0362 
Invited Paper Session 
Music City Center 
Room: CC-101B 

Keywords

causal inference, minimax optimality, fundamental limits, nonparametric 

Applied

No

Main Sponsor

IMS

Co Sponsors

Section on Nonparametric Statistics
Section on Statistical Learning and Data Science

Presentations

Structure-agnostic Optimality of Doubly Robust Learning for Treatment Effect Estimation

Average treatment effect estimation is the most central problem in causal inference with application to numerous disciplines. While many estimation strategies have been proposed in the literature, the statistical optimality of these methods has still remained an open area of investigation, especially in regimes where these methods do not achieve parametric rates. In this paper, we adopt the recently introduced structure-agnostic framework of statistical lower bounds, which poses no structural properties on the nuisance functions other than access to black-box estimators that achieve some statistical estimation rate. This framework is particularly appealing when one is only willing to consider estimation strategies that use non-parametric regression and classification oracles as black-box sub-processes. Within this framework, we prove the statistical optimality of the celebrated and widely used doubly robust estimators for both the Average Treatment Effect (ATE) and the Average Treatment Effect on the Treated (ATT), as well as weighted variants of the former, which arise in policy evaluation. 

Keywords

Treatment effect

Structure agnostic lower bounds 

Co-Author(s)

Jikai Jin, Stanford University
Vasilis Syrgkanis, Stanford University

Speaker

Vasilis Syrgkanis, Stanford University

The role of covariates in causal effect estimation

Keywords

causal inference, minimax, fixed design, covariate adjustment 

Speaker

Edward Kennedy

PresentationNN

Speaker

Jelena Bradic, University of California, San Diego

PresentationRR

Speaker

Rajarshi Mukherjee