贝叶斯半参数随机波动模型

Mark J. Jensen, J. Maheu
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引用次数: 126

摘要

本文扩展了关于随机波动率的全参数贝叶斯文献,以允许更一般的收益分布。该方法采用非参数贝叶斯方法来灵活地建模分布的偏度和峰度,而波动性的动力学继续用参数结构建模,而不是为收益创新指定一个特定的分布。我们的半参数贝叶斯方法提供了参数和分布不确定性的完整表征。提出了一种马尔可夫链蒙特卡罗抽样估计方法,并提出了从后验预测分布进行模拟的理论和计算问题。实例将新模型与标准参数随机波动模型进行了比较。
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Bayesian Semiparametric Stochastic Volatility Modeling
This paper extends the existing fully parametric Bayesian literature on stochastic volatility to allow for more general return distributions. Instead of specifying a particular distribution for the return innovation, nonparametric Bayesian methods are used to flexibly model the skewness and kurtosis of the distribution while the dynamics of volatility continue to be modeled with a parametric structure. Our semiparametric Bayesian approach provides a full characterization of parametric and distributional uncertainty. A Markov chain Monte Carlo sampling approach to estimation is presented with theoretical and computational issues for simulation from the posterior predictive distributions. An empirical example compares the new model to standard parametric stochastic volatility models.
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