Bayesian Analysis of a Stochastic Volatility Model with Leverage Effect and Fat Tails

Eric Jacquier, Peter E. Rossi, Nicholas G. Polson
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引用次数: 16

Abstract

The basic univariate stochastic volatility model specifies that conditional volatility follows a log-normal auto-regressive model with innovations assumed to be independent of the innovations in the conditional mean equation. Since the introduction of practical methods for inference in the basic volatility model (JPR-(1994)), it has been observed that the basic model is too restrictive for many financial series. We extend the basic SVOL to allow for a so-called "Leverage effect" via correlation between the volatility and mean innovations, and for fat-tails in the mean equation innovation. A Bayesian Markov Chain Monte Carlo algorithm is developed for the extended volatility model. Thus far, likelihood-based inference for the correlated SVOL model has not appeared in the literature. We develop Bayes Factors to assess the importance of the leverage and fat-tail extensions. Sampling experiments reveal little loss in precision from adding the model extensions but a large loss from using the basic model in the presence of mis-specification. For both equity and exchange rate data, there is overwhelming evidence in favor of models with fat-tailed volatility innovations, and for a leverage effect in the case of equity indices. We also find that volatility estimates from the extended model are markedly different from those produced by the basic SVOL.
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带有杠杆效应和肥尾的随机波动模型的贝叶斯分析
基本单变量随机波动率模型规定条件波动率遵循对数正态自回归模型,其创新假定独立于 条件均值方程中的创新。自从引入基本波动率模型的实用推断方法(JPR-(1994))以来,人们发现基本模型对许多 金融序列来说限制性太大。我们扩展了基本 SVOL 模型,通过波动率和均值创新之间的相关性来考虑所谓的 "杠杆效应",并考虑均值方程创新中的肥尾。为扩展波动率模型开发了一种贝叶斯马尔可夫链蒙特卡罗算法。迄今为止,相关 SVOL 模型的基于似然法的推断尚未出现在文献中。我们开发了贝叶斯因子来评估杠杆和胖尾扩展的重要性。抽样实验表明,加入模型扩展后,精度损失很小,但在存在误规范的情况下,使用基本模型的精度损失很大。对于股票和汇率数据,有压倒性的证据支持具有肥尾波动率创新的模型,而对于股票指数,则支持杠杆效应。我们还发现,扩展模型得出的波动率估计值与基本 SVOL 得出的估计值明显不同。
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Bayesian Analysis of a Stochastic Volatility Model with Leverage Effect and Fat Tails The Impact of Jumps in Volatility and Returns
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