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Forecasting the Chinese stock market volatility with international market volatilities: The role of regime switching

机译:预测中国股市波动与国际市场挥发性:政权切换的作用

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The purpose of this paper is to investigate the role of regime switching in the prediction of the Chinese stock market volatility with international market volatilities. Our work is based on the heterogeneous autoregressive (HAR) model and we further extend this simple benchmark model by incorporating an individual volatility measure from 27 international stock markets. The in-sample estimation results show that the transition probabilities are significant and the high volatility regime exhibits substantially higher volatility level than the low volatility regime. The out-of-sample forecasting results based on the Diebold-Mariano (DM) test suggest that the regime switching models consistently outperform their original counterparts with respect to not only the HAR and its extended models but also the five used combination approaches. In addition to point accuracy, the regime switching models also exhibit substantially higher directional accuracy. Furthermore, compared to time-varying parameter, Markov regime switching is found to be a more efficient way to process the volatility information in the changing world. Our results are also robust to alternative evaluation methods, various loss functions, alternative volatility estimators, various sample periods, and various settings of Markov regime switching. Finally, we provide an extension of forecasting aggregate market volatility on monthly frequency and observe mixed results.
机译:本文的目的是调查政权切换在预测中国股市波动预测国际市场波动方面的作用。我们的作品基于异质自我回归(HAR)模型,我们通过从27个国际股票市场的个人波动措施结合一个单独的波动措施,进一步扩展了这种简单的基准模型。样品中的估计结果表明,过渡概率很大,高挥发性制度表现出比低挥发性制度的挥发性水平大得多。基于DieBold-Mariano(DM)测试的样本预测结果表明,政权切换模型始终如一地优于其原始对应物,而不仅是哈尔及其扩展模型,还始终占据了原始对应物,而且始终如一,而且还始终优于Har及其扩展模型。除了点精度之外,政权切换模型还表现出大大更高的方向精度。此外,与时变参数相比,马尔可夫政权切换被发现是处理改变世界中的波动率信息的更有效方法。我们的结果对于替代评估方法,各种丢失功能,替代波动率估计,各种样本周期和马尔可夫政权切换的各种设置也是强大的。最后,我们在月频率上提供预测总市场波动的延伸,并观察混合结果。

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