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首页> 外文期刊>International Journal of Applied Mathematics & Statistics >Robust Bootstrap Procedure for Estimation of Binary Logistic Regression Model in the Presence of High Leverage Points with Medical Applications
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Robust Bootstrap Procedure for Estimation of Binary Logistic Regression Model in the Presence of High Leverage Points with Medical Applications

机译:存在高杠杆点的二元Logistic回归模型的鲁棒Bootstrap估计与医学应用

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摘要

The classical bootstrap method should be used with caution in binary logistic regression model since it can be easily affected by high leverage points. As a remedy to this problem, we propose two robust bootstrap methods, called the diagnostic logistic before bootstrap (DLGBB) and the weighted logistic bootstrap with probability (WLGBP). In the DLGBB, the high leverage points are excluded before applying the resampling process, and for the WLGBP, the high leverage points are attributed with low probabilities to be selected in the resampling process. The usefulness of our proposed methods is investigated through medical data and simulation study. Both the empirical and simulation results confirm that the DLGBB and the WLGBP methods give significant improvement over the classical bootstrap method.
机译:在二进制逻辑回归模型中,应谨慎使用经典的引导方法,因为它很容易受到高杠杆点的影响。为了解决这个问题,我们提出了两种健壮的自举方法,分别称为诊断先行自举逻辑(DLGBB)和加权概率自举自举(WLGBP)。在DLGBB中,在应用重采样过程之前将高杠杆点排除在外,而对于WLGBP,高杠杆点归因于在重采样过程中选择的概率较低。通过医学数据和模拟研究来研究我们提出的方法的有用性。经验和仿真结果均证实,DLGBB和WLGBP方法相对于经典的Bootstrap方法具有明显的改进。

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