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首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >ESTIMATING LINEAR FUNCTIONALS IN NONLINEAR REGRESSION WITH RESPONSES MISSING AT RANDOM
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ESTIMATING LINEAR FUNCTIONALS IN NONLINEAR REGRESSION WITH RESPONSES MISSING AT RANDOM

机译:带有随机响应的非线性回归中的线性函数估计

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摘要

We consider regression models with parametric (linear or nonlinear) re_gression function and allow responses to be “missing at random.” We assume that the errors have mean zero and are independent of the covariates. In order to estimate expectations of functions of covariate and response we use a fully imputed estimator, namely an empirical estimator based on estimators of conditional expectations given the covariate. We exploit the independence of covariates and errors by writing the conditional expectations as unconditional expectations, which can now be estimated by empirical plug-in estimators. The mean zero constraint on the error distribution is exploited by adding suitable residual-based weights. We prove that the estimator is efficient (in the sense of Hájek and Le Cam) if an efficient estimator of the parameter is used. Our results give rise to new efficient estimators of smooth transformations of expectations. Estimation of the mean response is discussed as a special (degenerate) case.
机译:我们考虑具有参数(线性或非线性)回归函数的回归模型,并允许响应“随机丢失”。我们假设误差均值为零,并且与协变量无关。为了估计对协变量和响应函数的期望,我们使用一个完全推算的估计器,即基于给定协变量的条件期望的估计器的经验估计器。我们通过将条件期望写为无条件期望来利用协变量和误差的独立性,现在可以通过经验性插件估算器进行估算。通过添加适当的基于残差的权重来利用对误差分布的平均零约束。我们证明,如果使用参数的有效估计量,则该估计量是有效的(在Hájek和Le Cam的意义上)。我们的结果产生了期望的平稳转换的新的有效估计量。平均响应的估计被讨论为一种特殊情况(退化)。

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