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Correlations and risk contagion between mixed assets and mixed-asset portfolio VaR measurements in a dynamic view: An application based on time varying copula models

机译:动态视图中混合资产与混合资产投资组合VaR度量之间的相关性和风险传染:基于时变copula模型的应用程序

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In this paper, we apply time varying Gaussian and SJC copula models to study the correlations and risk contagion between mixed assets: financial (stock), real estate and commodity (gold) assets in China firstly. Then we study the dynamic mixed-asset portfolio risk through VaR measurement based on the correlations computed by the time varying copulas. This dynamic VaR-copula measurement analysis has never been used on mixed-asset portfolios. The results show the time varying estimations fit much better than the static models, not only for the correlations and risk contagion based on time varying copulas, but also for the VaR-copula measurement. The time varying VaR-SJC copula models are more accurate than VaR-Gaussian copula models when measuring more risky portfolios with higher confidence levels. The major findings suggest that real estate and gold play a role on portfolio risk diversification and there exist risk contagion and flight to quality between mixed-assets when extreme cases happen, but if we take different mixed-asset portfolio strategies with the varying of time and environment, the portfolio risk will be reduced. (C) 2015 Elsevier B.V. All rights reserved.
机译:在本文中,我们首先应用时变高斯和SJC copula模型研究混合资产(金融(股票),房地产和商品(黄金)资产)之间的相关性和风险传染。然后,我们基于时变copulas计算的相关性,通过VaR度量来研究动态混合资产投资组合风险。这种动态的VaR-copula度量分析从未在混合资产投资组合中使用。结果表明,时变估计比静态模型更适合,不仅对于基于时变copula的相关性和风险传染,而且对于VaR-copula测量也是如此。当测量具有较高置信度的风险较高的投资组合时,时变VaR-SJC copula模型比​​VaR-Gaussian copula模型更准确。主要发现表明,房地产和黄金在投资组合风险分散中发挥作用,在极端情况下,混合资产之间存在风险传染和质量逃逸,但是如果我们采用随时间和时间变化的不同混合资产投资组合策略。在这种环境下,投资组合风险将会降低。 (C)2015 Elsevier B.V.保留所有权利。

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