On new tests for the Poisson distribution based on empirical weight functions

Winnie Kirui, Elzanie Bothma, Marius Smuts, Anke Steyn, Jaco Visagie
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Abstract

We propose new goodness-of-fit tests for the Poisson distribution. The testing procedure entails fitting a weighted Poisson distribution, which has the Poisson as a special case, to observed data. Based on sample data, we calculate an empirical weight function which is compared to its theoretical counterpart under the Poisson assumption. Weighted Lp distances between these empirical and theoretical functions are proposed as test statistics and closed form expressions are derived for L1, L2 and L1 distances. A Monte Carlo study is included in which the newly proposed tests are shown to be powerful when compared to existing tests, especially in the case of overdispersed alternatives. We demonstrate the use of the tests with two practical examples.
基于经验权重函数的泊松分布新检验
我们提出了新的泊松分布拟合优度检验方法。测试过程需要对观测数据拟合加权泊松分布,而泊松分布是泊松分布的一个特例。根据样本数据,我们计算出经验权重函数,并将其与泊松假设下的理论权重函数进行比较。我们提出了这些经验函数和理论函数之间的加权 Lp 距离作为测试统计量,并推导出了 L1、L2 和 L1 距离的闭式表达式。蒙特卡罗研究表明,与现有的检验方法相比,新提出的检验方法非常有效,特别是在过度分散的情况下。我们用两个实际例子演示了测试的使用。
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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