Available in the literature are properties which characterize the gamma distribution via independence of two appropriately chosen statistics. Well-known is the classical result when one of the statistics is the sample mean and the other one the sample coefficient of variation. In this paper, we elaborate on a version of Anosov's theorem which allows to establish a general result, Theorem 1, and a series of seven corollaries providing new characterization results for gamma distributions. We keep the sample mean as one of involved statistics, while now the second one can be taken from a quite large class of homogeneous feasible definite statistics. It is relevant to mention that there is an interesting parallel between the new characterization results for gamma distributions and recent characterization results for the normal distribution.
翻译:文献中可找到的属性是通过两种适当选择的统计独立进行伽马分布特征的属性。众所周知,典型的结果是,其中一种统计数据为样本平均值,而另一种为样本变异系数。在本文中,我们详细阐述了阿诺索夫理论的版本,该理论可以确定一个总体结果,即理论1,以及提供伽马分布新特征结果的七种序列系列。我们将样本作为所涉统计数据之一保留平均值,而现在的第二个样本则可以取自相当大一类的、可行的同质明确统计数据。有必要指出,对伽马分布的新定性结果与对正常分布的最新定性结果之间有着有趣的平行之处。