Title of article :
Nonparametric estimation of an extreme-value copula in arbitrary dimensions
Author/Authors :
Gudendorf، نويسنده , , Gordon and Segers، نويسنده , , Johan، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2011
Pages :
11
From page :
37
To page :
47
Abstract :
Inference on an extreme-value copula usually proceeds via its Pickands dependence function, which is a convex function on the unit simplex satisfying certain inequality constraints. In the setting of an i.i.d. random sample from a multivariate distribution with known margins and an unknown extreme-value copula, an extension of the Capéraà–Fougères–Genest estimator was introduced by D. Zhang, M. T. Wells and L. Peng [Nonparametric estimation of the dependence function for a multivariate extreme-value distribution, Journal of Multivariate Analysis 99 (4) (2008) 577–588]. The joint asymptotic distribution of the estimator as a random function on the simplex was not provided. Moreover, implementation of the estimator requires the choice of a number of weight functions on the simplex, the issue of their optimal selection being left unresolved. simplified representation of the CFG-estimator combined with standard empirical process theory provides the means to uncover its asymptotic distribution in the space of continuous, real-valued functions on the simplex. Moreover, the ordinary least-squares estimator of the intercept in a certain linear regression model provides an adaptive version of the CFG-estimator whose asymptotic behavior is the same as if the variance-minimizing weight functions were used. As illustrated in a simulation study, the gain in efficiency can be quite sizable.
Keywords :
Empirical process , Minimum-variance estimator , Multivariate extreme-value distribution , Ordinary least squares , Pickands dependence function , Unit simplex , Linear regression
Journal title :
Journal of Multivariate Analysis
Serial Year :
2011
Journal title :
Journal of Multivariate Analysis
Record number :
1565529
Link To Document :
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