On copula moment: empirical likelihood based estimation method

Jihane Abdelli, B. Brahimi
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Abstract

PurposeIn this paper, the authors applied the empirical likelihood method, which was originally proposed by Owen, to the copula moment based estimation methods to take advantage of its properties, effectiveness, flexibility and reliability of the nonparametric methods, which have limiting chi-square distributions and may be used to obtain tests or confidence intervals. The authors derive an asymptotically normal estimator of the empirical likelihood based on copula moment estimation methods (ELCM). Finally numerical performance with a simulation experiment of ELCM estimator is studied and compared to the CM estimator, with a good result.Design/methodology/approachIn this paper we applied the empirical likelihood method which originally proposed by Owen, to the copula moment based estimation methods.FindingsWe derive an asymptotically normal estimator of the empirical likelihood based on copula moment estimation methods (ELCM). Finally numerical performance with a simulation experiment of ELCM estimator is studied and compared to the CM estimator, with a good result.Originality/valueIn this paper we applied the empirical likelihood method which originally proposed by Owen 1988, to the copula moment based estimation methods given by Brahimi and Necir 2012. We derive an new estimator of copula parameters and the asymptotic normality of the empirical likelihood based on copula moment estimation methods.
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关于联结矩:经验似然估计方法
目的在本文中,作者将Owen最初提出的经验似然方法应用于基于copula矩的估计方法,以利用其非参数方法的性质、有效性、灵活性和可靠性,这些非参数方法具有有限的卡方分布,可用于获得检验或置信区间。基于copula矩估计方法,推导了经验似然的渐近正态估计量。最后通过仿真实验研究了ELCM估计器的数值性能,并与CM估计器进行了比较,取得了良好的结果。设计/方法论/方法在本文中,我们将Owen最初提出的经验似然法应用于基于copula矩的估计方法。在copula矩估计方法的基础上,导出了经验似然的渐近正态估计量。最后通过仿真实验研究了ELCM估计器的数值性能,并与CM估计器进行了比较,取得了良好的结果。原创性/价值在本文中,我们将Owen 1988最初提出的经验似然方法应用于Brahimi和Necir 2012提出的基于copula矩的估计方法。在copula矩估计方法的基础上,导出了一个新的copula参数估计量和经验似然的渐近正态性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Arab Journal of Mathematical Sciences
Arab Journal of Mathematical Sciences Mathematics-Mathematics (all)
CiteScore
1.20
自引率
0.00%
发文量
17
审稿时长
8 weeks
期刊最新文献
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