一种通过捕捉协变量边际信息处理不可忽略缺失数据的新半参数方法

A novel semiparametric approach to nonignorable missing data by catching covariate marginal information

Scandinavian Journal of Statistics · 2025
被引 0
ABS 3

中文导读

提出一种结合逻辑倾向得分模型和半参数比例似然比模型的方法,利用协变量边际信息处理不可忽略缺失数据,无需工具变量,估计量渐近正态且半参数有效。

Abstract

Abstract Nonignorable missing data problems are challenging because of the parameter identifiability issue. Existing methods designed for handling nonignorable missing data often struggle to fully utilize covariate marginal information, leading to potential efficiency losses. We propose a novel approach that leverages both a logistic propensity score model and a semiparametric proportional likelihood ratio model (SPLRM) for the observed data. Our approach generally does not require instrumental variables or shadow variables, leading to improved identifiability in most scenarios. In the identifiable case, we use the density‐ratio‐model‐based empirical likelihood to catch the covariate distribution information and estimate the target parameter. The proposed estimator is shown to be asymptotically normal and semiparametric efficient. In the exception case, we conduct a sensitivity analysis by making full use of the marginal covariate information. Our numerical results indicate that compared with existing estimators, the proposed estimator is more reliable and more robust to model mis‐specification.

计量经济学缺失数据半参数模型统计学