Copulae: An overview and recent developments

IF 4.4 2区 数学 Q1 STATISTICS & PROBABILITY Wiley Interdisciplinary Reviews-Computational Statistics Pub Date : 2021-04-03 DOI:10.1002/wics.1557
Joshua Größer, Ostap Okhrin
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引用次数: 20

Abstract

Over the decades that have passed since they were introduced, copulae still remain a very powerful tool for modeling and estimating multivariate distributions. This work gives an overview of copula theory and it also summarizes the latest results. This article recalls the basic definition, the most important cases of bivariate copulae, and it then proceeds to a sketch of how multivariate copulae are developed both from bivariate copulae and from scratch. Regarding higher dimensions, the focus is on hierarchical Archimedean, vine, and factor copulae, which are the most often used and most flexible ways to introduce copulae to multivariate distributions. We also provide an overview of how copulae can be used in various fields of data science, including recent results. These fields include but are not limited to time series and machine learning. Finally, we describe estimation and testing methods for copulae in general, their application to the presented copula structures, and we give some specific testing and estimation procedures for those specific copulae.
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Copulae:综述和最新进展
自引入以来的几十年过去了,copulae仍然是建模和估计多元分布的一个非常强大的工具。本文对copula理论进行了综述,并对最新的研究成果进行了总结。本文回顾了二元交点的基本定义和最重要的情况,然后概述了如何从二元交点和从零开始发展多元交点。对于高维,重点是层次化的阿基米德、vine和因子copulae,这是将copulae引入多元分布的最常用和最灵活的方法。我们还概述了copulae如何在数据科学的各个领域中使用,包括最近的结果。这些领域包括但不限于时间序列和机器学习。最后,我们描述了一般的估计和检验方法,以及它们在所提出的联结结构中的应用,并给出了这些特定联结结构的一些具体的检验和估计步骤。
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来源期刊
CiteScore
6.20
自引率
0.00%
发文量
31
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