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Semiparametric predictive mean matching

机译:半参数预测均值匹配

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Predictive mean matching is an imputation method that combines parametric and nonparametric techniques. It imputes missing values by means of the Nearest Neighbor Donor with distance based on the expected values of the missing variables conditional on the observed covariates, instead of computing the distance directly on the values of the covariates. In ordinary predictive mean matching the expected values are computed through a linear regression model. In this paper a generalization of the original predictive mean matching is studied. Here the expected values used for computing the distance are estimated through an approach based on Gaussian mixture models. This approach includes as a special case the original predictive mean matching but allows one to deal also with nonlinear relationships among the variables. In order to assess its performance, an empirical evaluation based on simulations is carried out.
机译:预测均值匹配是一种将参数和非参数技术相结合的估算方法。它通过最近邻施主以距离为基础估算缺失值,该距离基于以观察到的协变量为条件的缺失变量的期望值,而不是直接根据协变量的值计算距离。在普通的预测均值匹配中,期望值是通过线性回归模型计算的。本文研究了原始预测均值匹配的推广。在这里,用于计算距离的期望值是通过基于高斯混合模型的方法估算的。作为一种特殊情况,这种方法包括原始的预测均值匹配,但也可以处理变量之间的非线性关系。为了评估其性能,基于模拟进行了实证评估。

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