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Monte Carlo methods for estimating, smoothing, and filtering one- and two-factor stochastic volatility models

机译:用于估计,平滑和过滤一因素和两因素随机波动率模型的蒙特卡洛方法

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摘要

One- and two-factor stochastic volatility models are assessed over three sets of stock returns data: S&P 500, DJIA, and Nasdaq. Estimation is done by simulated maximum likelihood using techniques that are computationally efficient, robust, straightforward to implement, and easy to adapt to different models. The models are evaluated using standard, easily interpretable time-series tools. The results are broadly similar across the three data sets. The tests provide no evidence that even the simple single-factor models are unable to capture the dynamics of volatility adequately; the problem is to get the shape of the conditional returns distribution right. None of the models come close to matching the tails of this distribution. Including a second factor provides only a relatively small improvement over the single-factor models. Fitting this aspect of the data is important for option pricing and risk management.
机译:在三组股票收益数据上评估一因素和两因素随机波动率模型:S&P 500,DJIA和Nasdaq。通过使用计算效率高,鲁棒性强,易于实现且易于适应不同模型的技术,通过模拟的最大似然来完成估算。使用标准的,易于解释的时间序列工具对模型进行评估。三个数据集的结果大致相似。测试没有证据表明,即使是简单的单因素模型也无法充分捕捉波动性的动态。问题是要确定条件收益分配的形状。没有一个模型可以匹配此分布的尾部。与单因素模型相比,包含第二因素仅提供了相对较小的改进。拟合数据的这一方面对于期权定价和风险管理很重要。

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