Back to Search Start Over

Off-Policy Evaluation with Out-of-Sample Guarantees

Authors :
Ek, Sofia
Zachariah, Dave
Johansson, Fredrik D.
Stoica, Petre
Publication Year :
2023

Abstract

We consider the problem of evaluating the performance of a decision policy using past observational data. The outcome of a policy is measured in terms of a loss (aka. disutility or negative reward) and the main problem is making valid inferences about its out-of-sample loss when the past data was observed under a different and possibly unknown policy. Using a sample-splitting method, we show that it is possible to draw such inferences with finite-sample coverage guarantees about the entire loss distribution, rather than just its mean. Importantly, the method takes into account model misspecifications of the past policy - including unmeasured confounding. The evaluation method can be used to certify the performance of a policy using observational data under a specified range of credible model assumptions.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2301.08649
Document Type :
Working Paper