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NONPARAMETRIC INFERENCE ON LéVY MEASURES AND COPULAS

机译:LéVY度量和Copulas的非参数推论

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摘要

In this paper nonparametric methods to assess the multivariate Lévy measure are introduced. Starting from high-frequency observations of a Lévy process X, we construct estimators for its tail integrals and the Pareto-Lévy copula and prove weak convergence of these estimators in certain function spaces. Given n observations of increments over intervals of length △_n, the rate of convergence is k_n~(?1/2) for kn = n△_n which is natural concerning inference on the Lévy measure. Besides extensions to nonequidistant sampling schemes analytic properties of the Pareto-Lévy copula which, to the best of our knowledge, have not been mentioned before in the literature are provided as well.We conclude with a short simulation study on the performance of our estimators and apply them to real data.
机译:本文介绍了用于评估多元Lévy测度的非参数方法。从对Lévy过程X的高频观测开始,我们构造了其尾部积分和Pareto-Lévycopula的估计量,并证明了这些估计量在某些函数空间中的弱收敛。给定n个长度为△_n的间隔上的增量的观测值,对于kn = n△_n,收敛速度为k_n〜(?1/2),这自然涉及对Lévy测度的推论。除了扩展非等距抽样方案外,据我们所知,文献还没有提到帕累托-莱维copula的解析特性。最后,我们对估算器和将它们应用于真实数据。

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