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Multidimensional Fourier inversion using importance sampling with application to option pricing

机译:使用重要性抽样的多维傅里叶反演及其在期权定价中的应用

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In this paper we present our ongoing effort to use importance sampling to develop unbiased, bounded estimators of densities, distribution functions and expectations of functions of a random vector, when the characteristic function of the (multi-dimensional) random vector is available in analytic or semi-analytic form. This is especially of interest in options pricing as stochastic processes such as affine jump processes and Levy processes are ubiquitous in financial modeling and typically have characteristic functions (of their value at a given time) that are easily evaluated while their density or distribution functions have no readily computable closed form. Typically, for pricing options via Monte Carlo, a discretized version of the underlying SDE is simulated using Euler or a related method and the resultant estimator has a discretization bias. A noteworthy feature of our Monte Carlo approach is that, when applicable, it provides unbiased estimators.
机译:在本文中,当(多维)随机向量的特征函数可用于分析或求解时,我们将展示我们正在进行的努力,即使用重要性抽样来开发密度,分布函数和对随机向量的函数期望的无偏,有界估计量半解析形式。这在期权定价中尤其令人感兴趣,因为仿射跳跃过程和征费过程等随机过程在财务建模中无处不在,并且通常具有易于评估的特征函数(在给定时间具有其价值),而其密度或分布函数却没有易于计算的封闭形式。通常,对于通过Monte Carlo进行定价的期权,使用Euler或相关方法对基础SDE的离散化版本进行仿真,并且得出的估计量具有离散化偏差。蒙特卡洛方法的一个值得注意的特征是,在适用时,它提供了无偏估计量。

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