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首页> 外文期刊>Proceedings of the Workshop on Principles of Advanced and Distributed Simulation >USING PEARSON TYPE IV AND OTHER CINDERELLA DISTRIBUTIONS IN SIMULATION
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USING PEARSON TYPE IV AND OTHER CINDERELLA DISTRIBUTIONS IN SIMULATION

机译:在模拟中使用Pearson IV型和其他灰姑娘分布

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摘要

Univariate continuous distributions with unbounded range of variation have not been so widely used in simulation as those that are bounded (usually to the left). However situations do occur when they are needed, particularly in operations research and financial applications. Two distributions that have such unbounded range are the Pearson Type IV and Johnson SU distributions. Though both are well known in statistics, there is still a lack of methods in the literature for fitting these distributions to data which are both efficient and comprehensively reliable. Indeed the Pearson Type IV has the reputation of being difficult to fit. In this paper we identify the pitfalls and propose a fitting method that avoids them. We also show how to test the goodness of fit of estimated distributions. All the procedures described are included as VBA code in an accompanying Excel workbook available online. Two numerical examples are described in detail.
机译:具有无限变化范围的单变量连续分布没有像有界分布(通常在左侧)那样广泛地用于仿真中。但是,确实会在需要时发生情况,尤其是在运筹学和财务应用程序中。具有这种无限范围的两个分布是Pearson Type IV和Johnson SU分布。尽管两者在统计中都是众所周知的,但文献中仍缺乏将这些分布拟合到既有效又全面可靠的数据的方法。确实,Pearson Type IV具有难以安装的声誉。在本文中,我们确定了陷阱并提出了避免这些陷阱的拟合方法。我们还将展示如何测试估计分布的拟合优度。上面描述的所有过程均作为VBA代码包含在在线提供的随附Excel工作簿中。详细描述了两个数值示例。

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