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Threshold variable selection of asymmetric stochastic volatility models

机译:非对称随机波动率模型的阈值选择

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摘要

A threshold stochastic volatility (SV) model is used for capturing time-varying volatilities and nonlinearity. Two adaptive Markov chain Monte Carlo (MCMC) methods of model selection are designed for the selection of threshold variables for this family of SV models. The first method is the direct estimation which approximates the model posterior probabilities of competing models. Using parallel MCMC sampling to estimate these probabilities, the best threshold variable is selected with the highest posterior model probability. The second method is to use the deviance information criterion to compare among these competing models and select the best one. Simulation results lead us to conclude that for large samples the posterior model probability approximation method can give an accurate approximation of the posterior probability in Bayesian model selection. The method delivers a powerful and sharp model selection tool. An empirical study of five Asian stock markets provides strong support for the threshold variable which is formulated as a weighted average of important variables.
机译:阈值随机波动率(SV)模型用于捕获随时间变化的波动率和非线性。设计了两种模型选择的自适应马尔可夫链蒙特卡罗(MCMC)方法,用于选择该SV模型族的阈值变量。第一种方法是直接估计,它近似于竞争模型的模型后验概率。使用并行MCMC采样估计这些概率,选择具有最高后验模型概率的最佳阈值变量。第二种方法是使用偏差信息准则在这些竞争模型之间进行比较并选择最佳模型。仿真结果使我们得出结论,对于大样本,后验模型概率近似方法可以准确地近似贝叶斯模型选择中的后验概率。该方法提供了功能强大且敏锐的模型选择工具。对五个亚洲股市的经验研究为阈值变量提供了有力的支持,该阈值变量被公式化为重要变量的加权平均值。

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