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On generalised asymmetric stochastic volatility models

机译:关于广义非对称随机波动率模型

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Stochastic volatility (SV) models have been considered as a real alternative to time-varying volatility of the ARCH family. Existing asymmetric SV (ASV) models treat volatility asymmetry via the leverage effect hypothesis. Generalised ASV models that take account of both volatility asymmetry and normality violation expressed simultaneously by skewness and excess kurtosis are introduced. The new generalised ASV models are estimated using the Bayesian Markov Chain Monte Carlo approach for parametric and log-volatility estimation. By using simulated and real financial data series, the new models are compared to existing SV models for their statistical properties, and for their estimation performance in within and out-of-sample periods. Results show that there is much to gain from the introduction of the generalised ASV models.
机译:随机波动率(SV)模型已被认为是ARCH系列时变波动率的真正替代品。现有的不对称SV(ASV)模型通过杠杆效应假设来处理波动性不对称性。引入了同时考虑了波动不对称性和偏度和超峰度同时表示的正态性违背的广义ASV模型。使用参数估计和对数波动率估计的贝叶斯马尔可夫链蒙特卡洛方法估计新的广义ASV模型。通过使用模拟和真实财务数据系列,将新模型与现有SV模型进行比较,以了解它们的统计属性以及在样本内和样本外期间的估计性能。结果表明,引入广义ASV模型有很多好处。

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