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首页> 外文期刊>Proceedings of the Workshop on Principles of Advanced and Distributed Simulation >OPTIMAL RARE EVENT MONTE CARLO FOR MARKOV MODULATED REGULARLY VARYING RANDOM WALKS
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OPTIMAL RARE EVENT MONTE CARLO FOR MARKOV MODULATED REGULARLY VARYING RANDOM WALKS

机译:马尔科夫调制的随机变化的随机游走的最佳稀有事件蒙特卡洛

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Most of the efficient rare event simulation methodology for heavy-tailed systems has concentrated on processes with stationary and independent increments. Motivated by applications such as insurance risk theory, in this paper we develop importance sampling estimators that are shown to achieve asymptotically vanishing relative error property (and hence are strongly efficient) for the estimation of large deviation probabilities in Markov modulated random walks that possess heavy-tailed increments. Exponential twisting based methods, which are effective in light-tailed settings, are inapplicable even in the simpler case of random walk involving i.i.d. heavy-tailed increments. In this paper we decompose the rare event of interest into a dominant and residual component, and simulate them independently using state-independent changes of measure that are both intuitive and easy to implement.
机译:对于重尾系统,大多数有效的稀有事件模拟方法都集中于具有固定增量和独立增量的过程。受保险风险理论等应用的启发,本文中,我们开发了重要度抽样估算器,这些估算器被证明能够渐近消失的相对误差属性(因此非常有效),可用于估计具有重度误差的Markov调制随机游走中的大偏差概率。尾部增量。即使在涉及i.i.d.的随机行走的更简单情况下,在轻尾环境中有效的基于指数扭曲的方法也不适用。重尾的增量。在本文中,我们将感兴趣的稀有事件分解为主要成分和残余成分,并使用直观且易于实现的,独立于状态的度量更改来独立模拟它们。

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