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Robust Bootstrap Approach to Estimate Bias and RMSE of Indirect Effects in Mediation Analysis

机译:强大的引导方法来估算中介分析中间接效应的偏差和RMSE

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Since its introduction by Efron [1], the bootstrap has been the object of research in statistics. We proposed a new bootstrap procedure of indirect effect in mediation model which is resistant to outliers. The proposed approach was based on residual bootstrap which incorporated rescaled studentized residuals, namely the Rescaled Studentized Residual Bootstrap using Least Squares (ReSRB). The simulation results signify that the ReSRB has outstanding performances compared to the other methods in the presence of outliers. The ReSRB not only has smaller bias, but also smaller root of mean squares error (RMSE). The results also show that for the contaminated data, the better performance of our proposed method with regard to bias and RMSE did not only happen for small or medium percentage of outliers, but also at large percentage of outliers. The advantages of the ReSRB over other methods are even more apparent in data sets with medium or large percentage of outliers.
机译:自efron介绍以来,Bootstrap是统计数据研究的对象。我们提出了一种对异常值抵抗的中介模型中间接效果的新引导程序。所提出的方法是基于残留的自举,该举止融合了重复的学生化残差,即使用最小二乘(ResRB)的重新定义的学生化残余引导。模拟结果表示ResRB与异常值存在的其他方法相比具有出色的性能。 RESRB不仅具有较小的偏差,而且较小的均方误差(RMSE)。结果还表明,对于污染的数据,我们提出的偏见和RMSE的更好表现不仅发生了异常值的小或中等百分比,而且占百分比的异常值。 RESRB在其他方法中的优点在数据集中更加明显,具有中等或大百分比的异常值。

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