Yang Shu, Kim Jae Kwang
Department of Statistics, North Carolina State University.
Department of Statistics, Iowa State University.
Scand Stat Theory Appl. 2020 Sep;47(3):839-861. doi: 10.1111/sjos.12429. Epub 2019 Nov 8.
Predictive mean matching imputation is popular for handling item nonresponse in survey sampling. In this article, we study the asymptotic properties of the predictive mean matching estimator for finite-population inference using a superpopulation model framework. We also clarify conditions for its robustness. For variance estimation, the conventional bootstrap inference is invalid for matching estimators with a fixed number of matches due to the nonsmoothness nature of the matching estimator. We propose a new replication variance estimator, which is asymptotically valid. The key strategy is to construct replicates directly based on the linear terms of the martingale representation for the matching estimator, instead of individual records of variables. Simulation studies confirm that the proposed method provides valid inference.
预测均值匹配插补法在处理调查抽样中的项目无回答问题时很受欢迎。在本文中,我们使用超总体模型框架研究预测均值匹配估计量用于有限总体推断的渐近性质。我们还阐明了其稳健性的条件。对于方差估计,由于匹配估计量的非光滑性质,传统的自助法推断对于具有固定匹配数的匹配估计量是无效的。我们提出了一种新的复制方差估计量,它在渐近意义上是有效的。关键策略是直接基于匹配估计量的鞅表示的线性项来构建复制,而不是基于变量的单个记录。模拟研究证实了所提出的方法能提供有效的推断。