English

Blockwise Missingness meets AI: A Tractable Solution for Semiparametric Inference

Methodology 2025-09-30 v1 Machine Learning

Abstract

We consider parameter estimation and inference when data feature blockwise, non-monotone missingness. Our approach, rooted in semiparametric theory and inspired by prediction-powered inference, leverages off-the-shelf AI (predictive or generative) models to handle missing completely at random mechanisms, by finding an approximation of the optimal estimating equation through a novel and tractable Restricted Anova hierarchY (RAY) approximation. The resulting Inference for Blockwise Missingness(RAY), or IBM(RAY) estimator incorporates pre-trained AI models and carefully controls asymptotic variance by tuning model-specific hyperparameters. We then extend IBM(RAY) to a general class of estimators. We find the most efficient estimator in this class, which we call IBM(Adaptive), by solving a constrained quadratic programming problem. All IBM estimators are unbiased, and, crucially, asymptotically achieving guaranteed efficiency gains over a naive complete-case estimator, regardless of the predictive accuracy of the AI models used. We demonstrate the finite-sample performance and numerical stability of our method through simulation studies and an application to surface protein abundance estimation.

Keywords

Cite

@article{arxiv.2509.24158,
  title  = {Blockwise Missingness meets AI: A Tractable Solution for Semiparametric Inference},
  author = {Qi Xu and Lorenzo Testa and Jing Lei and Kathryn Roeder},
  journal= {arXiv preprint arXiv:2509.24158},
  year   = {2025}
}
R2 v1 2026-07-01T06:03:15.300Z