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A PENALTY-BASED METHOD FROM RECONSTRUCTING SMOOTH LOCAL VOLATILITY SURFACE FROM AMERICAN OPTIONS

机译:一种基于罚分的美国人期权重构局部波动率曲面的方法

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摘要

This paper is devoted to develop a robust penalty-based method of reconstructing smooth local volatility surface from the observed American option prices. This reconstruction problem is posed as an inverse problem: given a finite set of observed American option prices, find a local volatility function such that the theoretical option prices matches the observed ones optimally with respect to a prescribed performance criterion. The theoretical American option prices are governed by a set of partial differential complementarity problems (PDCP). We propose a penalty-based numerical method for the solution of the PDCP. Typically, the reconstruction problem is ill-posed and a bicubic spline regularization technique is thus proposed to overcome this difficulty. We apply a gradient-based optimization algorithm to solve this nonlinear optimization problem, where the Jacobian of the cost function is computed via finite difference approximation. Two numerical experiments: a synthetic American put option example and a real market American put option example, are performed to show the robustness and effectiveness of the proposed method to reconstructing the unknown volatility surface.
机译:本文致力于从观察到的美国期权价格中开发出一种基于惩罚性的稳健方法,以重建平滑的本地波动率表面。这个重建问题是一个反问题:给定有限的一组观察到的美国期权价格,找到一个局部波动率函数,以使理论期权价格相对于规定的绩效标准与观察到的最优价格匹配。理论上的美国期权价格受一系列偏微分互补问题(PDCP)支配。我们提出了基于惩罚的数值方法来求解PDCP。通常,重建问题是不适当的,因此提出了三次三次样条正则化技术来克服此困难。我们应用基于梯度的优化算法来解决此非线性优化问题,其中成本函数的雅可比行列式是通过有限差分近似计算的。进行了两个数值实验:一个合成的美国看跌期权示例和一个实际的美国看跌期权示例,以显示所提出的方法重构未知波动面的鲁棒性和有效性。

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