Papageorgiou H, Vardaki Maria
Department of Mathematics, National and Kapodistrian University of Athens, Athens, Greece.
School of Health Sciences, National and Kapodistrian University of Athens, Athens, Greece.
J Stat Theory Pract. 2022;16(2):30. doi: 10.1007/s42519-022-00261-z. Epub 2022 Apr 22.
Two families of bivariate discrete Poisson-Lindley distributions are introduced. The first is derived by mixing the common parameter in a bivariate Poisson distribution by different models of univariate continuous Lindley distributions. The second is obtained by generalizing a bivariate binomial distribution with respect to its exponent when it follows any of five different univariate discrete Poisson-Lindley distributions with one or two parameters. The use of probability-generating functions is mainly employed to derive some general properties for both families and specific characteristics for each one of their members. We obtain expressions for probabilities, moments, conditional distributions, regression functions, as well as characterizations for certain bivariate models and their marginals. An attractive property of all bivariate individual models is that they contain only two or three parameters, and one of them is readily estimated by simple ratios of their sample means. This feature, and since all marginal distributions are over-dispersed, strongly suggests their potential use to describe bivariate dependent count data in many different areas.
引入了两类二元离散泊松 - 林德利分布。第一类是通过用不同的单变量连续林德利分布模型混合二元泊松分布中的公共参数得到的。第二类是在二元二项分布遵循具有一个或两个参数的五种不同单变量离散泊松 - 林德利分布中的任何一种时,对其指数进行推广而得到的。主要使用概率生成函数来推导这两类分布的一些一般性质以及它们每个成员的特定特征。我们得到了概率、矩、条件分布、回归函数的表达式,以及某些二元模型及其边缘分布的特征。所有二元个体模型的一个吸引人的性质是它们只包含两三个参数,并且其中一个可以通过样本均值的简单比率很容易地估计出来。这一特征,以及由于所有边缘分布都是过度分散的,强烈表明它们在许多不同领域描述二元相关计数数据方面具有潜在用途。