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Smoothed Monte Carlo estimators for the time-in-the-red in risk processes

机译:平滑的蒙特卡洛估计量,用于风险过程中的零点时间

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We consider a modified version of the de Finetti model in insurance risk theory in which, when surpluses become negative the company has the possibility of borrowing, and thus continue its operation. For this model we examine the problem of estimating the time-in-the red over a finite horizon via simulation. We propose a smoothed estimator based on a conditioning argument which is very simple to implement as well as particularly efficient, especially when the claim distribution is heavy tailed. We establish unbiasedness for this estimator and show that its variance is lower than the na?ve estimator based on counts. Finally we present a number of simulation results showing that the smoothed estimator has variance which is often significantly lower than that of the na?ve Monte-Carlo estimator.
机译:我们考虑保险风险理论中de Finetti模型的修改版本,该模型中,当盈余变为负数时,公司就有可能借款,从而可以继续运营。对于此模型,我们研究了通过仿真估算有限时间范围内的红色时间的问题。我们提出了一种基于条件参数的平滑估计器,该条件估计器易于实现且特别有效,尤其是在索赔分布繁重的情况下。我们为该估计量建立了无偏度,并根据计数表明其方差低于朴素的估计量。最后,我们提供了许多仿真结果,这些结果表明平滑估计量的方差通常大大低于朴素的蒙特卡洛估计量。

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