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Variance reduction of Monte Carlo and randomized quasi-Monte Carlo estimators for stochastic volatility models in finance

机译:蒙特卡罗的差异减少和随机化准蒙特卡罗估算在财务中随机波动模型

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We illustrate by numerical examples how certain variance reduction methods dramatically improve the efficiency of Monte Carlo simulation for option pricing and other estimation problems in finance, in the context of a geometric Brownian motionmodel with stochastic volatility. We consider lookback options and partial hedging strategies, with different models for the volatility process. For variance reduction, we use control variates, antithetic variates, conditional Monte Carlo, and randomizedlattice rules coupled with a Brownian bridge technique that reduces the effective dimension of the problem. In some of our examples, the variance is reduced by a factor of more than 100 millions without increasing the work. The examples also illustratehow randomized quasi-Monte Carlo can be effective even if the problems considered involve a large number of dimensions.
机译:我们通过数值示例说明某些方差减少方法在具有随机波动性的几何布朗MotionModel的背景下,某些方差减少方法显着提高了蒙特卡罗模拟的脊髓仿真的效率和金融中的其他估计问题。我们考虑回顾选项和部分对冲策略,具有不同模型的波动过程。对于差异减少,我们使用控制变体,抗静电变化,条件蒙特卡罗和随机化规则,与褐色桥技术耦合,减少了问题的有效维度。在我们的一些示例中,在不增加工作的情况下,方差减少了超过100百万的倍数。除了考虑的问题涉及大量维度时,实施例还示出了随机随机的准蒙特卡罗可以是有效的。

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