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Nonlinear filtering of asymmetric stochastic volatility models and Value-at-Risk estimation

机译:非对称随机波动率模型的非线性滤波和风险价值估计

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This paper develops an efficient approach to analytical learning of Asymmetric Stochastic Volatility (ASV) models through nonlinear filtering, and shows that they are useful for practical risk management. This involves the derivation of a Nonlinear Quadrature Filter (NQF) that operates directly on the nonlinear ASV model. The NQF filter makes Gaussian approximations to the prior and posterior density of the latent volatility, but not in the observation space which makes possible easy handling of heavy-tailed data. Experiments in Value-at-Risk (VaR) assessment via an original bootsrtapping methodology are conducted with NQF and several ASV learning algorithms. The results indicate that our approach yields models with better statistical characteristics than the considered competitors, and slightly improved VaR forecasts.
机译:本文提出了一种通过非线性滤波对非对称随机波动率(ASV)模型进行分析学习的有效方法,并表明它们对于实际的风险管理非常有用。这涉及直接在非线性ASV模型上运行的非线性正交滤波器(NQF)的推导。 NQF滤波器使高斯近似于潜在波动率的先验密度和后验密度,但在观测空间中却不然,这使得轻松处理重尾数据成为可能。通过NQF和几种ASV学习算法,通过原始的引导映射方法进行了风险价值(VaR)评估的实验。结果表明,我们的方法得出的模型具有比所考虑的竞争对手更好的统计特征,并且VaR预测略有改进。

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