Heavy-tailed phase-type random variables have mathematically tractable distributions and are conceptually attractive to model physical phenomena due to their interpretation in terms of a hidden Markov structure. Three recent extensions of regular phase-type distributions give rise to models which allow for heavy tails: discrete- or continuous-scaling; fractional-time semi-Markov extensions; and inhomogeneous time-change of the underlying Markov process. In this paper, we present a unifying theory for heavy-tailed phase-type distributions for which all three approaches are particular cases. Our main objective is to provide useful models for heavy-tailed phase-type distributions, but any other tail behavior is also captured by our specification. We provide relevant new examples and also show how existing approaches are naturally embedded. Subsequently, two multivariate extensions are presented, inspired by the univariate construction which can be considered as a matrix version of a frailty model. We provide fully explicit EM-algorithms for all models and illustrate them using synthetic and real-life data.
翻译:重尾阶段随机变量在数学上具有可移动的分布,在概念上对模拟物理现象具有吸引力,因为它们以隐藏的马尔科夫结构来解释。定期阶段类型分布的最近三次扩展产生了允许重尾的模型:离散或连续缩放;分位时半马尔科夫扩展;以及基础马科夫过程不相容的时间变化。在本文件中,我们提出了一个重尾阶段类型分布的统一理论,所有三种方法都属于特殊情况。我们的主要目标是为重尾阶段类型分布提供有用的模型,但任何其他尾部行为也被我们的规格所捕捉。我们提供了相关的新例子,并说明了现有方法是如何自然嵌入的。随后,在可被视为脆弱模型矩阵版本的单轨结构的启发下,提出了两个多变量扩展。我们为所有模型提供了完全明确的EM-aloritms,并用合成和真实生命数据来说明这些模型。