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Estimating Bias and RMSE of Indirect Effects using Rescaled Residual Bootstrap in Mediation Analysis

机译:在中介分析中使用重新缩放的残差自举估计间接效应的偏差和RMSE

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摘要

It is a common practice to estimate the parameters of mediation model by using the Ordinary Least Squares (OLS) method. The construction of T statistics and confidence interval estimates for making inferences on the parameters of a mediation model, particularly the indirect effect, is usually are based on the assumption that the estimates are normally distributed. Nonetheless, in practice many estimates are not normal and have a heavy tailed distribution which may be the results of having outliers in the data. An alternative approach is to use bootstrap method which does not rely on the normality assumption. In this paper, 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 Monte Carlo simulations showed that the ReSRB is more efficient than some existing methods in the presence of outliers.
机译:通常,使用普通最小二乘(OLS)方法估计中介模型的参数。用于推断中介模型参数(尤其是间接影响)的T统计量和置信区间估计值通常基于估计值呈正态分布的假设。但是,实际上,许多估计值都不是正态的,并且具有严重的拖尾分布,这可能是数据中存在异常值的结果。一种替代方法是使用不依赖于正态性假设的引导程序方法。在本文中,我们提出了一种新的间接作用自举程序,该程序可以抵抗异常值。所提出的方法基于残差自举,该残差自举合并了缩放后的学生化残差,即使用最小二乘(ReSRB)的缩放后的学生化残差自举。蒙特卡罗模拟显示,在存在异常值的情况下,ReSRB比某些现有方法更有效。

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