English

Off-policy evaluation beyond overlap: partial identification through smoothness

Methodology 2024-03-12 v2 Statistics Theory Statistics Theory

Abstract

Off-policy evaluation (OPE) is the problem of estimating the value of a target policy using historical data collected under a different logging policy. OPE methods typically assume overlap between the target and logging policy, enabling solutions based on importance weighting and/or imputation. In this work, we approach OPE without assuming either overlap or a well-specified model by considering a strategy based on partial identification under non-parametric assumptions on the conditional mean function, focusing especially on Lipschitz smoothness. Under such smoothness assumptions, we formulate a pair of linear programs whose optimal values upper and lower bound the contributions of the no-overlap region to the off-policy value. We show that these linear programs have a concise closed form solution that can be computed efficiently and that their solutions converge, under the Lipschitz assumption, to the sharp partial identification bounds on the off-policy value. Furthermore, we show that the rate of convergence is minimax optimal, up to log factors. We deploy our methods on two semi-synthetic examples, and obtain informative and valid bounds that are tighter than those possible without smoothness assumptions.

Keywords

Cite

@article{arxiv.2305.11812,
  title  = {Off-policy evaluation beyond overlap: partial identification through smoothness},
  author = {Samir Khan and Martin Saveski and Johan Ugander},
  journal= {arXiv preprint arXiv:2305.11812},
  year   = {2024}
}
R2 v1 2026-06-28T10:39:27.889Z