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On L-infinity convergence of Neumann series approximation in missing data problems

机译:缺失数据问题中Neumann级数逼近的L-无穷收敛

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摘要

The inverse of the nonparametric information operator is key for finding doubly robust estimators and the semiparametric efficient estimator in missing data problems. It is known that no closed-form expression for the inverse of the nonparametric information operator exists when missing data form nonmonotone patterns. The Neumann series is usually used for approximating the inverse. However, the Neumann series approximation is only known to converge in L-2 norm, which is not sufficient for establishing statistical properties of the estimators yielded from the approximation. In this work, we show that L-infinity convergence of the Neumann series approximations to the inverse of the nonparametric information operator and to the efficient scores in missing data problems can be obtained under very simple conditions. This paves the way to a study of the asymptotic properties of the doubly robust estimators and the locally semiparametric efficient estimator in those difficult situations.
机译:非参数信息运算符的逆是寻找缺失数据问题中的双稳健估计量和半参数有效估计量的关键。众所周知,当缺少数据的非单调模式时,不存在非参数信息运算符逆函数的闭式表达式。 Neumann级数通常用于近似逆。但是,仅已知Neumann级数逼近收敛于L-2范数,这不足以建立从该逼近得出的估计量的统计性质。在这项工作中,我们表明,可以在非常简单的条件下获得与非参数信息算子的逆和丢失数据问题中的有效分数有关的Neumann级数逼近的L-无穷收敛。这为研究那些困难情况下的双稳健估计和局部半参数有效估计的渐近性质铺平了道路。

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