A simple and efficient method for finding the closest generalized lambda distribution to a specific model

IF 0.1 Q4 MATHEMATICS
Dilanka S. Dedduwakumara, L. Prendergast, R. Staudte
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引用次数: 7

Abstract

Abstract The four-parameter Generalized Lambda distribution (GLD) can be used to approximate many probability distributions. We present a simple and efficient two-stage process for finding optimal GLD parameters to approximate a specified distribution. The probability density quantile function is first used to find the best GLD shape parameters. Given those shape parameters, it is then straightforward to find the best location and scale parameters. We highlight the excellent performance of our approach with comparisons to two existing and popular methods for a wide choice of distributions. Finally, we show that this is method can be used with other distributions by providing applications also to the Generalized Beta distribution.
找到与特定模型最接近的广义lambda分布的一种简单有效的方法
摘要四参数广义Lambda分布(GLD)可以用来近似许多概率分布。我们提出了一个简单有效的两阶段过程,用于寻找最佳GLD参数来近似指定的分布。概率密度分位数函数首先用于寻找最佳GLD形状参数。给定这些形状参数,就可以直接找到最佳位置和比例参数。通过与两种现有的流行方法进行比较,我们强调了我们的方法的出色性能,以获得广泛的分布选择。最后,我们通过提供广义贝塔分布的应用程序,证明了这种方法可以用于其他分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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审稿时长
13 weeks
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