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On Bias Reduction in Robust Inference for Generalized Linear Models

机译:广义线性模型鲁棒推断中的偏倚减少

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It is well known that one or more outlying points in the data may adversely affect the consistency of the quasi-likelihood or the likelihood estimators for the regression effects. Similar to the quasi-likelihood approach, the existing outliers-resistant Mallow's type quasi-likelihood (MQL) estimation approach may also produce biased regression estimators. As a remedy, by using a fully standardized score function in the MQL estimating equation, in this paper, we demonstrate that the fully standardized MQL estimators are almost unbiased ensuring its higher consistency performance. Both count and binary responses subject to one or more outliers are used in the study. The small sample as well as asymptotic results for the competitive estimators are discussed.
机译:众所周知,数据中的一个或多个异常点可能会对拟似然性或回归估计的似然估计的一致性产生不利影响。与拟似然法相似,现有的抗离群值的Mallow's型拟似然(MQL)估算方法也可能会产生有偏差的回归估算器。作为一种补救措施,在本文中,通过在MQL估计方程中使用完全标准化的得分函数,我们证明了完全标准化的MQL估计量几乎无偏,从而确保了其较高的一致性性能。研究中同时使用了计数和二进制响应,它们均受一个或多个异常值的影响。讨论了竞争估计量的小样本和渐近结果。

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