Asymptotically Distribution-Free Goodness-of-Fit Testing for Copulas

S. Can, J. Einmahl, R. Laeven
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引用次数: 6

Abstract

Consider a random sample from a continuous multivariate distribution function F with copula C. In order to test the null hypothesis that C belongs to a certain parametric family, we construct an under H0 asymptotically distribution-free process that serves as a tests generator. The process is a transformation of the difference of a semi-parametric and a parametric estimator of C. This transformed empirical process converges weakly to a standard multivariate Wiener process, paving the way for a multitude of powerful asymptotically distribution-free goodness-of-fit tests for copula families. We investigate the finite-sample performance of our approach through a simulation study and illustrate its applicability with a data analysis.
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copula的渐近无分布拟合优度检验
为了检验C属于某参数族的零假设,我们构造了一个H0下的渐近无分布过程作为检验生成器。该过程是c的半参数估计量和参数估计量之差的变换,变换后的经验过程弱收敛于标准的多元Wiener过程,为copula族的大量强大的渐近无分布拟合优度检验铺平了道路。我们通过模拟研究研究了我们的方法的有限样本性能,并通过数据分析说明了它的适用性。
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