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Estimating tail probabilities of random sums of infinite mixtures of phase-type distributions

机译:估计相型分布的无限混合的随机和的尾部概率

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We consider the problem of estimating tail probabilities of random sums of infinite mixtures of phase-type (IMPH) distributions-a class of distributions corresponding to random variables which can be represented as a product of an arbitrary random variable with a classical phase-type distribution. Our motivation arises from applications in risk and queueing problems. Classical rare-event simulation algorithms cannot be implemented in this setting because these typically rely on the availability of the CDF or the MGF, but these are difficult to compute or not even available for the class of IMPH distributions. In this paper, we address these issues and propose alternative simulation methods for estimating tail probabilities of random sums of IMPH distributions; our algorithms combine importance sampling and conditional Monte Carlo methods. The empirical performance of each method suggested is explored via numerical experimentation.
机译:我们考虑估计相位类型(IMPH)分布的无限混合物的无限混合物的尾部概率的问题 - 与随机变量相对应的一类分布,其可以用经典相位分布表示为任意随机变量的乘积。我们的动机产生了风险和排队问题的应用。在此设置中不能实现古典稀有事件仿真算法,因为这些通常依赖于CDF或MGF的可用性,但这些难以计算或甚至可用于IMPH分布的类别。在本文中,我们解决了这些问题,并提出了用于估计IMPH分布的随机和尾部概率的替代仿真方法;我们的算法相结合了重要性采样和条件蒙特卡罗方法。建议各种方法的经验性能通过数值实验探索。

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