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A Comparative analysis of multiple outlier detection procedures in the linear regression model

机译:线性回归模型中多个离群值检测程序的比较分析

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摘要

We evaluate several published techniques to detect multiple outliers in linear regression using an extensive Monte Carlo simulation. These procedures include both direct methods from algorithms and indirect methods from robust regression estimators. We evaluate the impact of outlier density and geometry, regressor variable dimension, and outlying distance in both leverage and residual on detection capability and false alarm (swamping) probability. The simulation scenarios focus on outlier configurations likely to be encountered in practice and use a designed experiment approach. The results for each scenario provide insight and limitations to performance for each technique. Finally, we summarize each procedure's performance and make recommendations.
机译:我们评估了使用广泛的蒙特卡洛模拟法在线性回归中检测多个异常值的几种公开技术。这些过程包括来自算法的直接方法和来自稳健回归估计器的间接方法。我们评估异常值密度和几何形状,回归变量的尺寸以及杠杆和残差中的远距离对检测能力和错误警报(陷入)概率的影响。仿真方案集中于实践中可能遇到的异常配置,并使用设计的实验方法。每个方案的结果提供了每种技术的见解和性能限制。最后,我们总结每个程序的性能并提出建议。

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