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ESTIMATION OF STOCHASTIC VOLATILITY MODELS BY NONPARAMETRIC FILTERING

机译:基于非参数滤波的随机波动率模型估计

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A two-step estimation method of stochastic volatility models is proposed: In the first step, we nonparametrically estimate the (unobserved) instantaneous volatility process. In the second step, standard estimation methods for fully observed diffusion processes are employed, but with the filtered/estimated volatility process replacing the latent process. Our estimation strategy is applicable to both parametric and nonparametric stochastic volatility models, and can handle both jumps and market microstructure noise. The resulting estimators of the stochastic volatility model will carry additional biases and variances due to the first-step estimation, but under regularity conditions we show that these vanish asymptotically and our estimators inherit the asymptotic properties of the infeasible estimators based on observations of the volatility process. A simulation study examines the finite-sample properties of the proposed estimators.
机译:提出了随机波动率模型的两步估计方法:第一步,我们非参数地估计(未观察到的)瞬时波动率过程。在第二步中,采用用于完全观察到的扩散过程的标准估计方法,但用过滤/估计的挥发性过程代替潜伏过程。我们的估计策略适用于参数和非参数随机波动率模型,并且可以处理跳跃和市场微观结构噪声。随机波动率模型的最终估计量由于第一步估计而将带有其他偏差和方差,但是在规则性条件下,我们表明这些渐近消失,并且我们的估计量基于对波动率过程的观察继承了不可行估计量的渐近性质。仿真研究检查了所提出估计量的有限样本性质。

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