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首页> 外文期刊>Journal of International Money and Finance >The Copula-GARCH model of conditional dependencies: An international stock market application
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The Copula-GARCH model of conditional dependencies: An international stock market application

机译:条件依赖的Copula-GARCH模型:国际股票市场应用

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摘要

Modeling the dependency between stock market returns is a difficult task when returns follow a complicated dynamics. When returns are non-normal, it is often simply impossible to specify the multivariate distribution relating two or more return series. In this context, we propose a new methodology based on copula functions, which consists in estimating first the univariate distributions and then the joining distribution. In such a context, the dependency parameter can easily be rendered conditional and time varying. We apply this methodology to the daily returns of four major stock markets. Our results suggest that conditional dependency depends on past realizations for European market pairs only. For these markets, dependency is found to be more widely affected when returns move in the same direction than when they move in opposite directions. Modeling the dynamics of the dependency parameter also suggests that dependency is higher and more persistent between European stock markets.
机译:当收益遵循复杂的动态过程时,对股票市场收益之间的依赖关系进行建模是一项艰巨的任务。当收益不正常时,通常根本不可能指定涉及两个或多个收益序列的多元分布。在这种情况下,我们提出了一种基于copula函数的新方法,该方法包括首先估计单变量分布,然后估计联合分布。在这种情况下,可以很容易地使依赖参数成为有条件的并且随时间变化。我们将此方法应用于四个主要股票市场的每日收益。我们的结果表明,条件依赖仅取决于过去欧洲市场对的实现。对于这些市场,发现收益在相同方向上的波动要比在相反方向上的波动受到更大的影响。对依赖关系参数的动力学建模还表明,欧洲股票市场之间的依赖关系更高且更持久。

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