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Depth-based weighted jackknife empirical likelihood for non-smooth U-structure equations WJEL for U-structure equations

机译:用于U形结构方程的非光滑U形结构方程WJEL的深度基加权架的实证似然性

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摘要

In many applications, parameters of interest are estimated by solving some non-smooth estimating equations with U-statistic structure. Jackknife empirical likelihood (JEL) approach can solve this problem efficiently by reducing the computation complexity of the empirical likelihood (EL) method. However, as EL, JEL suffers the sensitivity problem to outliers. In this paper, we propose a weighted jackknife empirical likelihood (WJEL) to tackle the above limitation of JEL. The proposed WJEL tilts the JEL function by assigning smaller weights to outliers. The asymptotic of the WJEL ratio statistic is derived. It converges in distribution to a multiple of a chi-square random variable. The multiplying constant depends on the weighting scheme. The self-normalized version of WJEL ratio does not require to know the constant and hence yields the standard chi-square distribution in the limit. Robustness of the proposed method is illustrated by simulation studies and one real data application.
机译:在许多应用中,通过求解具有U形统计结构的一些非平滑估计方程来估计感兴趣的参数。 通过降低经验似然(EL)方法的计算复杂性,巨石魔术似然似然(JEL)方法可以有效地解决这个问题。 然而,作为EL,JEL对异常值遭受了敏感性问题。 在本文中,我们提出了一种加权的千刀经验似然(Wjel)来解决jel的上述限制。 通过将较小的权重分配给异常值,所提出的Wjel倾向于jel函数。 衍生WJEL比率统计的渐近。 它会聚到Chi-Square随机变量的多个倍数。 乘法常量取决于加权方案。 WJEL比率的自归一化版本不需要知道常量,从而产生限制的标准Chi-Square分布。 通过模拟研究和一个真实数据应用说明了所提出的方法的鲁棒性。

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