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On the identification of extreme outliers and dragon-kings mechanisms in the upper tail of income distribution

机译:关于收入分配上尾的极端离群值和龙王机制的识别

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摘要

The presence of extreme outliers in the upper tail data of income distribution affects the Pareto tail modeling. A simulation study is carried out to compare the performance of three types of boxplot in the detection of extreme outliers for Pareto data, including standard boxplot, adjusted boxplot and generalized boxplot. It is found that the generalized boxplot is the best method for determining extreme outliers for Pareto distributed data. For the application, the generalized boxplot is utilized for determining the exreme outliers in the upper tail of Malaysian income distribution. In addition, for this data set, the confidence interval method is applied for examining the presence of dragon-kings, extreme outliers which are beyond the Pareto or power-laws distribution.
机译:收入分布的上尾数据中存在极端离群值会影响帕累托尾模型。进行了仿真研究,以比较三种类型的箱形图在检测帕累托数据的极端离群值方面的性能,包括标准箱形图,调整后的箱形图和广义箱形图。发现广义箱线图是确定Pareto分布数据的极端离群值的最佳方法。对于该应用程序,使用广义箱线图确定马来西亚收入分配上尾的极值异常值。另外,对于此数据集,置信区间方法用于检查龙王,超出帕累托分布或幂律分布的极端离群值的存在。

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