A note on nonparametric estimation of bivariate tail dependence
Nonparametric estimation of tail dependence can be based on a standardization of the marginals if their cumulative distribution functions are known. In this paper it is shown to be asymptotically more efficient if the additional knowledge of the marginals is ignored and estimators are based on ranks. The discrepancy between the two estimators is shown to be substantial for the popular Clayton and Gumbel–Hougaard models. A brief simulation study indicates that the asymptotic conclusions transfer to finite samples.
Year of publication: |
2014
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Authors: | Axel, Bücher |
Published in: |
Statistics & Risk Modeling. - De Gruyter. - Vol. 31.2014, 2, p. 12-12
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Publisher: |
De Gruyter |
Subject: | Asymptotic variance | nonparametric estimation | rank-based inference | tail copula | tail dependence |
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