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Reduced Order Models for Pricing American Options under Stochastic Volatility and Jump-diffusion Models

机译:随机波动率和跳-扩散模型下的美式期权定价的降阶模型

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American options can be priced by solving linear complementary problems (LCPs) with parabolic partial(-integro) differential operators under stochastic volatility and jump-diffusion models like Heston, Merton, and Bates models. These operators are discretized using finite difference methods leading to a so-called full order model (FOM). Here reduced order models (ROMs) are derived employing proper orthogonal decomposition (POD) and non negative matrix factorization (NNMF) in order to make pricing much faster within a given model parameter variation range. The numerical experiments demonstrate orders of magnitude faster pricing with ROMs.
机译:可以通过在随机波动率和跳跃扩散模型(例如Heston,Merton和Bates模型)下用抛物线偏(-整数)微分算子解决线性互补问题(LCP),为美式期权定价。使用有限差分方法将这些算子离散化,从而得到所谓的全阶模型(FOM)。在这里,使用适当的正交分解(POD)和非负矩阵分解(NNMF)得出降阶模型(ROM),以便在给定的模型参数变化范围内更快地定价。数值实验表明,ROM的定价更快。

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