Testing the Gaussian copula hypothesis for financial assets dependences
نویسندگان
چکیده
Using one of the key property of copulas that they remain invariant under an arbitrary monotonous change of variable, we investigate the null hypothesis that the dependence between financial assets can be modeled by the Gaussian copula. We find that most pairs of currencies and pairs of major stocks are compatible with the Gaussian copula hypothesis, while this hypothesis can be rejected for the dependence between pairs of commodities (metals). Notwithstanding the apparent qualification of the Gaussian copula hypothesis for most of the currencies and the stocks, a non-Gaussian copula, such as the Student’s copula, cannot be rejected if it has sufficiently many “degrees of freedom”. As a consequence, it may be very dangerous to embrace blindly the Gaussian copula hypothesis, especially when the correlation coefficient between the pair of asset is too high, so that the tail dependence neglected by the Gaussian copula can became large, leading to ignore extreme events which may occur in unison.
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