Nonresponse frequently arises in practice, and simply ignoring it may lead to erroneous inference. Besides, the number of collected covariates may increase as the sample size in modern statistics, so parametric imputation or propensity score weighting usually leads to inefficiency without consideration of sparsity. In this paper, we propose a nonparametric imputation method with sparse learning by employing an efficient kernel-based learning gradient algorithm to identify truly informative covariates. Moreover, an augmented probability weighting framework is adopted to improve the estimation efficiency of the nonparametric imputation method and establish the limiting distribution of the corresponding estimator under regularity assumptions. The performance of the proposed method is also supported by several simulated examples and one real-life analysis.
翻译:此外,收集的共变数数量可能会随着现代统计的抽样规模而增加,因此,参数估算或倾向性加权通常会导致效率低下,而不考虑夸大性。在本文中,我们建议采用非参数估算法,通过使用高效的内核学习梯度算法来识别真正信息化的共变数,采用学习梯度算法来分散学习。此外,还采用了增加概率加权框架,以提高非参数估算法的估算效率,并确定在定期假设下对相应估计数的分布进行限制。 几个模拟实例和一次真实生活分析也支持了拟议方法的绩效。