Identification and Inference for Algorithmic Frontiers with Selective Labels

Yiqi Liu Speaker
 
Yiqi Liu Co-Author
 
Francesca Molinari Co-Author
Cornell University
 
Amilcar Velez Co-Author
Cornell University
 
Tuesday, Aug 4: 9:50 AM - 10:15 AM
Invited Paper Session 
Thomas M. Menino Convention & Exhibition Center 
This paper provides identification results to characterize a fairness-accuracy (FA) frontier, and statistical inference tools to test hypotheses and build a confidence set for the FA-frontier, when outcomes are observed only for selected individuals. When the selection process is unrestricted but loss is measured in specific ways, we provide a characterization of the sharp identification region of the FA-frontier. Under an assumption of unconfoundedness conditional on observables (and unrestricted loss functions), we obtain point identification and propose a debiased machine learning estimator, derive its asymptotic distribution, and show how this can be used to carry out inference for the FA-frontier. In work in progress, we extend the partial identification results to a broader class of loss functions.

Keywords

Algorithmic fairness

selective labels

statistical inference

support function