Biometrika Apr 29, 2026

An average-case sensitivity analysis for unmeasured confounding

Authors
Qingyuan Zhao Yao Zhang
Paper Information
  • Journal:
    Biometrika
  • DOI:
    10.1093/biomet/asag030
  • Published:
    April 29, 2026
  • Added to Tracker:
    May 04, 2026
Abstract

Summary Sensitivity analysis for the unconfoundedness assumption is crucial in observational studies. For this purpose, the marginal sensitivity model has gained popularity in recent years owing to its good interpretability and mathematical properties. However, most existing models only consider a worst-case parameter that bounds the logit difference between the observed-data and full-data propensity scores, which may not fully capture the extent of unmeasured confounding. We propose a new sensitivity model that is parameterized by the second moment of the propensity score ratio, requiring only the average strength of unmeasured confounding to be bounded. By characterizing the associated sensitivity analysis as an optimization problem, we derive sharp closed-form bounds on the average potential outcomes under our model. We propose efficient one-step estimators for these bounds based on the corresponding efficient influence functions. Additionally, we use the multiplier bootstrap to construct simultaneous confidence bands to cover the sensitivity curve, consisting of bounds at different values of the sensitivity parameters. Through a real-data study, we illustrate how this average-case sensitivity analysis can provide tighter bounds and facilitate calibration of the results using observed covariates.

Author Details
Qingyuan Zhao
Author
Yao Zhang
Author
Citation Information
APA Format
Qingyuan Zhao & Yao Zhang (2026) . An average-case sensitivity analysis for unmeasured confounding. Biometrika , 10.1093/biomet/asag030.
BibTeX Format
@article{paper1146,
  title = { An average-case sensitivity analysis for unmeasured confounding },
  author = { Qingyuan Zhao and Yao Zhang },
  journal = { Biometrika },
  year = { 2026 },
  doi = { 10.1093/biomet/asag030 },
  url = { https://doi.org/10.1093/biomet/asag030 }
}