基于非参数C和d维的分位数回归

IF 0.6 Q4 STATISTICS & PROBABILITY
Marija Tepegjozova, Jing Zhou, G. Claeskens, C. Czado
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引用次数: 10

摘要

分位数回归是统计建模中一个日益重要的领域。它是线性回归的补充方法,因为计算一系列条件分位数函数可以更准确地建模变量之间的随机关系,特别是在尾部。本文介绍了一种基于C-和d -藤copuls的非约束、高度灵活的非参数分位数回归方法。Vine copula允许对数据中的边际分布和依赖结构进行单独建模,并且可以通过由一系列相连的树组成的图形结构来表示。通过这种方式,我们获得了一个分位数回归模型,该模型克服了分位数回归的典型问题,如分位数交叉或共线性,需要转换和变量的相互作用。我们的方法通过最大化树序列的条件对数似然,同时考虑到接下来的两个树级别,将变量的两步提前排序。我们证明了非参数条件分位数估计是一致的。所提出的方法的性能评估在低和高维设置使用模拟和现实世界的数据。结果表明,该模型具有较好的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonparametric C- and D-vine-based quantile regression
Abstract Quantile regression is a field with steadily growing importance in statistical modeling. It is a complementary method to linear regression, since computing a range of conditional quantile functions provides more accurate modeling of the stochastic relationship among variables, especially in the tails. We introduce a nonrestrictive and highly flexible nonparametric quantile regression approach based on C- and D-vine copulas. Vine copulas allow for separate modeling of marginal distributions and the dependence structure in the data and can be expressed through a graphical structure consisting of a sequence of linked trees. This way, we obtain a quantile regression model that overcomes typical issues of quantile regression such as quantile crossings or collinearity, the need for transformations and interactions of variables. Our approach incorporates a two-step ahead ordering of variables, by maximizing the conditional log-likelihood of the tree sequence, while taking into account the next two tree levels. We show that the nonparametric conditional quantile estimator is consistent. The performance of the proposed methods is evaluated in both low- and high-dimensional settings using simulated and real-world data. The results support the superior prediction ability of the proposed models.
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来源期刊
Dependence Modeling
Dependence Modeling STATISTICS & PROBABILITY-
CiteScore
1.00
自引率
0.00%
发文量
18
审稿时长
12 weeks
期刊介绍: The journal Dependence Modeling aims at providing a medium for exchanging results and ideas in the area of multivariate dependence modeling. It is an open access fully peer-reviewed journal providing the readers with free, instant, and permanent access to all content worldwide. Dependence Modeling is listed by Web of Science (Emerging Sources Citation Index), Scopus, MathSciNet and Zentralblatt Math. The journal presents different types of articles: -"Research Articles" on fundamental theoretical aspects, as well as on significant applications in science, engineering, economics, finance, insurance and other fields. -"Review Articles" which present the existing literature on the specific topic from new perspectives. -"Interview articles" limited to two papers per year, covering interviews with milestone personalities in the field of Dependence Modeling. The journal topics include (but are not limited to):  -Copula methods -Multivariate distributions -Estimation and goodness-of-fit tests -Measures of association -Quantitative risk management -Risk measures and stochastic orders -Time series -Environmental sciences -Computational methods and software -Extreme-value theory -Limit laws -Mass Transportations
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