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A trivariate non-Gaussian copula having 2-dimensional Gaussian copulas as margins : Testing Gaussian copula hypothesis for all pairs of assets is not the same as testing higher-dimensional Gaussian copula hypothesis for the whole portfolio

机译:以2维高斯copula为边距的三元非高斯copula:测试所有资产对的高斯copula假设与测试整个投资组合的高维高斯copula假设是不同的

摘要

Arthur Charpentier (see Arthur's blog) was recently contacted by some researchers willing to test if a multivariate copula is - or not - Gaussian. They use a test proposed in Malevergne and Sornette (2003) stating that one should simply test for pairwise normality. This test may be of importance in finance, in actuarial science, and in risk management in general: for example, given 120 financial assets, in order to test whether or not some 120-dimensional random vector of interest in finance admits a Gaussian copula, can one restrict the Gaussian copula hypothesis test to pairs of assets? This short note proves that it is not the case, and provides a simple counter-example based on some multivariate EFGM copula. This confirms the intuition that one cannot only consider all pairs of the studied random variables and that one cannot avoid to study the full vector to test whether a random vector admits a Gaussian copula. An earlier counter-example, discovered after writing this note, is also mentioned.
机译:一些研究人员最近联系了Arthur Charpentier(请参阅Arthur的博客),他们愿意测试多变量copula是否为高斯模型。他们使用了在Malevergne和Sornette(2003)中提出的一项测试,该测试指出,仅应测试成对正态性。该测试在金融,精算科学和总体风险管理中可能非常重要:例如,假设有120种金融资产,为了测试金融中某些120维随机感兴趣向量是否接受高斯copula,能否将高斯copula假设检验限制为资产对?此简短说明证明并非如此,并提供了基于一些多元EFGM copula的简单反例。这证实了这样的直觉,即人们不仅可以考虑所有对已研究的随机变量,而且还不能避免研究完整向量以测试随机向量是否允许高斯系。还提到了在撰写本说明后发现的一个较早的反例。

著录项

  • 作者

    Loisel Stéphane;

  • 作者单位
  • 年度 2009
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类
  • 入库时间 2022-08-20 20:42:27

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