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Quantile Dependence between Stock Markets and its Application in Volatility Forecasting

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  • Heejoon Han

Abstract

This paper examines quantile dependence between international stock markets and evaluates its use for improving volatility forecasting. First, we analyze quantile dependence and directional predictability between the US stock market and stock markets in the UK, Germany, France and Japan. We use the cross-quantilogram, which is a correlation statistic of quantile hit processes. The detailed dependence between stock markets depends on specific quantile ranges and this dependence is generally asymmetric; the negative spillover effect is stronger than the positive spillover effect and there exists strong directional predictability from the US market to the UK, Germany, France and Japan markets. Second, we consider a simple quantile-augmented volatility model that accommodates the quantile dependence and directional predictability between the US market and these other markets. The quantile-augmented volatility model provides superior in-sample and out-of-sample volatility forecasts.

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  • Heejoon Han, 2016. "Quantile Dependence between Stock Markets and its Application in Volatility Forecasting," Papers 1608.07193, arXiv.org.
  • Handle: RePEc:arx:papers:1608.07193
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