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首页> 外文期刊>Mathematics of operations research >Efficient Rare-Event Simulation for Multiple Jump Events in Regularly Varying Random Walks and Compound Poisson Processes
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Efficient Rare-Event Simulation for Multiple Jump Events in Regularly Varying Random Walks and Compound Poisson Processes

机译:多次跳跃事件的高效稀有事件仿真在定期不同随机散步和复合泊松过程中

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摘要

We propose a class of strongly efficient ram-event simulation estimators for random walks and compound Poisson processes with a regularly varying increment/jump-size distribution in a general large deviations regime. Our estimator is based on an importance sampling strategy that hinges on a recently established heavy-tailed sample-path large deviations result. The new estimators are straightforward to implement and can be used to systematically evaluate the probability of a wide range of rare events with bounded relative error. They are "universal" in the sense that a single importance sampling scheme applies to a very general class of rare events that arise in heavy-tailed systems. In particular, our estimators can deal with rare events that are caused by multiple big jumps (therefore, beyond the usual principle of a single big jump) as well as multidimensional processes such as the buffer content process of a queueing network We illustrate the versatility of our approach with several applications that arise in the context of mathematical finance, actuarial science, and queueing theory.
机译:我们提出了一类强效率的RAM-EVENT模拟估计,用于随机散步和复合泊松过程,在一般的大偏差方案中具有定期变化/跳跃尺寸分布。我们的估算员基于一个重要的抽样策略,即铰链在最近建立的重型样本路径大偏差结果。新的估算器很简单地实施,可用于系统地评估广泛的罕见事件的概率与有界相对误差。他们是“普遍的”,即单一重要的抽样方案适用于大尾系统中出现的一般罕见事件的一般罕见事件。特别是,我们的估算变量可以处理由多个大跳跃引起的罕见事件(因此,超出了单个大跳跃的通常原则)以及诸如排队网络的缓冲区内容过程之类的多维过程,我们说明了我们具有几种应用的方法,在数学融资,精算科学和排队理论的背景下出现。

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