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Parametric Inference and Dynamic State Recovery From Option Panels

机译:从选项面板进行参数推断和动态状态恢复

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We develop a new parametric estimation procedure for option panels observed with error. We exploit asymptotic approximations assuming an ever increasing set of option prices in the moneyness (cross-sectional) dimension, but with a fixed time span. We develop consistent estimators for the parameters and the dynamic realization of the state vector governing the option price dynamics. The estimators converge stably to a mixed-Gaussian law and we develop feasible estimators for the limiting variance. We also provide semiparametric tests for the option price dynamics based on the distance between the spot volatility extracted from the options and one constructed nonparametrically from high-frequency data on the underlying asset. Furthermore, we develop new tests for the day-by-day model fit over specific regions of the volatility surface and for the stability of the risk-neutral dynamics over time. A comprehensive Monte Carlo study indicates that the inference procedures work well in empirically realistic settings. In an empirical application to S&P 500 index options, guided by the new diagnostic tests, we extend existing asset pricing models by allowing for a flexible dynamic relation between volatility and priced jump tail risk. Importantly, we document that the priced jump tail risk typically responds in a more pronounced and persistent manner than volatility to large negative market shocks.
机译:我们为观察到错误的选项面板开发了一种新的参数估计程序。我们采用渐近逼近法,假设在货币(横截面)维度上的期权价格不断增加,但是具有固定的时间跨度。我们为控制期权价格动态的参数和状态向量的动态实现开发了一致的估计器。估计量稳定地收敛于混合高斯定律,我们为极限方差开发了可行的估计量。我们还根据从期权中提取的现货波动率与从基础资产的高频数据中非参数构造的期权之间的距离提供期权价格动态的半参数测试。此外,我们针对波动模型特定区域的日常模型以及随时间变化的风险中性动态的稳定性开发了新的测试。全面的蒙特卡洛研究表明,推理过程在经验上逼真的环境下效果很好。在新诊断测试的指导下,对S&P 500指数期权的经验应用,我们通过允许波动率和定价跳尾风险之间的灵活动态关系扩展了现有资产定价模型。重要的是,我们记录了定价的跳尾风险通常会比波动性较大的负面市场冲击更明显,更持久。

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