基于copula的时间序列相关性表征与建模

R. Ibragimov
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引用次数: 26

摘要

本文提出了一种新的统一方法,用于时间序列和随机过程的基于copula的建模和表征。我们得到了许多时间序列相关结构在有限维分布对应的联轴上的完整表征。特别地,我们关注了任意阶马尔可夫链、m相关和r独立时间序列以及鞅和条件对称过程的基于copula的表示。我们的结果为具有规定依赖结构的时间序列建模提供了新的方法,例如,高阶马尔可夫过程以及满足Chapman-Kolmogorov随机方程的非马尔可夫过程。我们还着重于构建和分析新的copula类,这些copula类可以灵活地组合时间序列的许多不同的依赖性质。在其他结果中,我们提出了基于线性函数(Eyraud-Farlie-Gumbel-Mongenstern copula),幂函数(幂copula)和傅立叶多项式(傅立叶copula)展开的新类cop- ulas的研究,并介绍了使用这些类相关函数建模时间序列的方法。我们还重点研究了时间序列背景下经验copula过程的弱收敛性,并获得了一类广泛的β混合序列经验copula过程渐近高斯性的新结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Copula-Based Dependence Characteriztions and Modeling for Time Series
This paper develops a new unified approach to copula-based modeling and characterizations for time series and stochastic processes. We obtain complete characterizations of many time series dependence structures in terms of copulas corresponding to their finite-dimensional distributions. In particular, we focus on copula- based representations for Markov chains of arbitrary order, m-dependent and r-independent time series as well as martingales and conditionally symmetric processes. Our results provide new methods for modeling time series that have prescribed dependence structures such as, for instance, higher order Markov processes as well as non-Markovian processes that nevertheless satisfy Chapman-Kolmogorov stochastic equations. We also focus on the construction and analysis of new classes of copulas that have flexibility to combine many different dependence properties for time series. Among other results, we present a study of new classes of cop- ulas based on expansions by linear functions (Eyraud-Farlie-Gumbel-Mongenstern copulas), power functions (power copulas) and Fourier polynomials (Fourier copulas) and introduce methods for modeling time series using these classes of dependence functions. We also focus on the study of weak convergence of empirical copula processes in the time series context and obtain new results on asymptotic gaussianity of such processes for a wide class of beta mixing sequences.
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