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Empirical Likelihood Inference for the Mean Difference of Two Nonparametric Populations with Missing Data

机译:具有数据缺失的两个非参数总体均值差的经验似然推断

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Let Z = (X, Y)~T be a bivariate population with mean EZ = (EX,EY)~T and mean difference θ = EY-EX. Based on the 'complete' data after inverse probability weighted (IPW) imputation, we make empirical likelihood (EL) inference for θ. It is shown that the limiting distribution of the EL statistic under IPW imputation is x_1~2 unlike the EL statistic based on the original nonparametric regression imputation approach which is asymptotically distributed as a scaled chi-squared distribution. This research has enhanced the EL method based on the original nonparametric regression imputation at two aspects: (1) it releases the burden of estimating adjustment coefficients; (2) it can improve the accuracy of the EL confidence intervals.
机译:设Z =(X,Y)〜T是一个二元总体,平均EZ =(EX,EY)〜T,平均差θ= EY-EX。基于逆概率加权(IPW)估算后的“完整”数据,我们对θ进行经验似然(EL)推断。结果表明,IPW插补条件下EL统计量的极限分布为x_1〜2,这与基于原始非参数回归插补方法的EL统计量渐近地分布为按比例的卡方分布的EL统计量不同。这项研究从两个方面增强了基于原始非参数回归插补的EL方法:(1)减轻了估计调整系数的负担; (2)可以提高EL置信区间的准确性。

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