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Estimation and Inference Based on Neumann Series Approximation to Locally Efficient Score in Missing Data Problems

机译:基于Neumann级数逼近的缺失数据问题局部有效得分的估计与推断。

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摘要

Theory on semi-parametric efficient estimation in missing data problems has been systematically developed by Robins and his coauthors. Except in relatively simple problems, semi-parametric efficient scores cannot be expressed in closed forms. Instead, the efficient scores are often expressed as solutions to integral equations. Neumann series was proposed in the form of successive approximation to the efficient scores in those situations. Statistical properties of the estimator based on the Neumann series approximation are difficult to obtain and as a result, have not been clearly studied. In this paper, we reformulate the successive approximation in a simple iterative form and study the statistical properties of the estimator based on the reformulation. We show that a doubly robust locally efficient estimator can be obtained following the algorithm in robustifying the likelihood score. The results can be applied to, among others, parametric regression, marginal regression and Cox regression when data are subject to missing values and the data are missing at random. A simulation study is conducted to evaluate the performance of the approach and a real data example is analysed to demonstrate the use of the approach. Copyright (c) 2009 Board of the Foundation of the Scandinavian Journal of Statistics.
机译:Robins及其合作者已经系统地开发了丢失数据问题中的半参数有效估计理论。除相对简单的问题外,半参数有效得分不能以封闭形式表示。相反,有效分数通常表示为积分方程的解。在这些情况下,以有效分数的逐次逼近形式提出了Neumann级数。基于Neumann级数逼近的估计量的统计性质很难获得,因此尚未进行清晰的研究。在本文中,我们以简单的迭代形式来重新构造逐次逼近,并基于重新构造来研究估计量的统计性质。我们展示了在鲁棒化似然分数之后,该算法可以获得双鲁棒的局部有效估计量。当数据受到缺失值的影响并且数据随机缺失时,结果可以应用于参数回归,边际回归和Cox回归。进行了仿真研究以评估该方法的性能,并分析了一个真实的数据示例以演示该方法的使用。斯堪的纳维亚统计杂志基金会(c)2009理事会。

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    HUA YUN CHEN;

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