条件重尾与德国股市回报

J. Oden, Kevin J. Hurt, Susan Gentry
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引用次数: 0

摘要

作为世界第四大经济体,德国的金融部门在全球经济中发挥着关键作用。股权市场作为金融领域最重要的组成部分之一,发挥着越来越重要的作用。因此,中国股市的风险管理对市场参与者的福利至关重要。为了考虑波动性聚类和条件重尾这两个风格化事实,我们利用Guo (2017a)的框架,并考虑具有正态倒高斯分布的GARCH模型在拟合德国股票收益序列时的经验表现。结果表明,NRIG分布在拟合股票市场收益方面具有较好的效果。
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Conditional Heavy Tails and the Stock Market Returns in Germany
As the fourth largest economy over the world, Germany’s financial sector plays a key role in the global economy. As one of the most important components of the financial sector, the equity market played a more and more important role. Thus, risk management of its stock market is crucial for welfare of its market participants. To account for the two stylized facts, volatility clustering and conditional heavy tails, we take advantage of the framework in Guo (2017a) and consider empirical performance of the GARCH model with normal reciprocal inverse Gaussian distribution in fitting the German stock return series. Our results indicate the NRIG distribution has superior performance in fitting the stock market returns.
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