English

Bayesian Sensitivity Analysis for Missing Data Using the E-value

Methodology 2021-08-31 v1

Abstract

Sensitivity Analysis is a framework to assess how conclusions drawn from missing outcome data may be vulnerable to departures from untestable underlying assumptions. We extend the E-value, a popular metric for quantifying robustness of causal conclusions, to the setting of missing outcomes. With motivating examples from partially-observed Facebook conversion events, we present methodology for conducting Sensitivity Analysis at scale with three contributions. First, we develop a method for the Bayesian estimation of sensitivity parameters leveraging noisy benchmarks(e.g., aggregated reports for protecting unit-level privacy); both empirically derived subjective and objective priors are explored. Second, utilizing the Bayesian estimation of the sensitivity parameters we propose a mechanism for posterior inference of the E-value via simulation. Finally, closed form distributions of the E-value are constructed to make direct inference possible when posterior simulation is infeasible due to computational constraints. We demonstrate gains in performance over asymptotic inference of the E-value using data-based simulations, supplemented by a case-study of Facebook conversion events.

Keywords

Cite

@article{arxiv.2108.13286,
  title  = {Bayesian Sensitivity Analysis for Missing Data Using the E-value},
  author = {Wu Xue and Abbas Zaidi},
  journal= {arXiv preprint arXiv:2108.13286},
  year   = {2021}
}