Title of article :
Parameter Estimation of Some Archimedean Copulas Based on Minimum Cramér-von-Mises Distance
Author/Authors :
Susam, Selim Orhun Department of Econometrics - Munzur University, Turkey
Abstract :
The purpose of this paper is to introduce a new estimation method for
estimating the Archimedean copula dependence parameter in the non-parametric
setting. The estimation of the dependence parameter has been selected as the value
that minimizes the Cramér-von-Mises distance which measures the distance between
Empirical Bernstein Kendall distribution function and true Kendall distribution function.
AMonte Carlo study is performedto measure the performance of thenewestimator and
compared to conventional estimation methods. In terms of estimation performance,
simulation results show that the proposed Minumum Cramér-von-Mises estimation
method has a good performance for low dependence and a small sample size when
compared with the other estimation methods. The new minimum distance estimation
of the dependence parameter is applied to model the dependence of two real data sets.
Keywords :
Bernstein Polynomials , Parameter Estimation , Archimedean Copula , Cramér-von-Mises
Journal title :
Journal of the Iranian Statistical Society (JIRSS)