The use of Bayesian filtering has been widely used in mathematical finance, primarily in Stochastic Volatility models. They help in estimating unobserved latent variables from observed market data. This field saw huge developments in recent years, because of the increased computational power and increased research in the model parameter estimation and implied volatility theory. In this paper, we design a novel method to estimate underlying states (volatility and risk) from option prices using Bayesian filtering theory and Posterior Cramer-Rao Lower Bound (PCRLB), further using it for option price prediction. Several Bayesian filters like Extended Kalman Filter (EKF), Unscented Kalman Filter (UKF), Particle Filter (PF) are used for latent state estimation of Black-Scholes model under a GARCH model dynamics. We employ an Average and Best case switching strategy for adaptive state estimation of a non-linear, discrete-time state space model (SSM) like Black-Scholes, using PCRLB based performance measure to judge the best filter at each time step [1]. Since estimating closed-form solution of PCRLB is non-trivial, we employ a particle filter based approximation of PCRLB based on [2]. We test our proposed framework on option data from S$\&$P 500, estimating the underlying state from the real option price, and using it to estimate theoretical price of the option and forecasting future prices. Our proposed method performs much better than the individual applied filter used for estimating the underlying state and substantially improve forecasting capabilities.
翻译:在数学融资中,主要在Stochastic 波动模型中广泛使用贝叶斯过滤法,主要在Stochastic 波动模型中,这些模型有助于估计从所观察到的市场数据中未观测到的潜在变量。这个领域近年来出现了巨大的发展。由于计算能力增加,模型参数估计和隐含的波动理论研究增加,这个领域近年来出现了巨大的发展。在本文中,我们设计了一种新颖的方法,用巴伊西亚过滤理论和Poseor Cramer-Ramer-Raome 500 Low Bound (PCRLB) 来估计选项价格的基础(波动和风险), 进一步使用它来预测选项价格。一些贝伊西亚过滤法过滤器,如扩展卡尔曼过滤器(EKF)、不鼓励卡尔曼过滤器(UKF)、粒子过滤器(PF)等若干过滤器过滤器过滤器,近年来,在GARCH模型中,我们用基于封闭式的SLFI 模型来评估非基于我们CRFIFI 价格成本的模型评估方法,我们采用平均和基于SCRFIFIFIFIFIFIF 的模型的模型评估方法, 方法,我们用了我们提出的S-CRFIFIFIFIFIFIFIFFFFFFFFFFF 的模型的模型的模型的模型的模型, 。