基于copula表示的一般条件U -过程的弱收敛性和均匀带宽一致性:多元设置

IF 0.7 4区 数学 Q2 MATHEMATICS
S. Bouzebda
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引用次数: 1

摘要

u统计代表了一类基本的统计数据,它通过对多主题响应定义的兴趣量进行建模。U统计量将随机变量X的经验平均值概括为X的不同观测值的每个m元组的总和。Probab。[1991]引入了一类称为条件u统计量的估计量。本文给出了一类新的条件u统计量估计量。更准确地说,我们研究了基于copula表示的条件u统计量。我们建立了所提估计量的带宽一致性。此外,在φ∈Ƒ上,对于一个适当限制的类Ƒ,满足一定的矩条件,在有界和无界两种情况下,也建立了一致的一致性。我们的定理允许对这些统计数据使用数据驱动的本地带宽。此外,在相同的背景下,我们证明了随机审查下回归函数的审查加权估计的非参数逆概率的均匀带宽一致性,这是它自己感兴趣的。我们还考虑了条件u统计过程的弱收敛性。讨论了条件u统计过程的野自举。这些结果在Vapnik-Chervonenkis类函数的一些标准结构条件和模型的一些温和条件下得到了证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the weak convergence and the uniform-in-bandwidth consistency of the general conditional U -processes based on the copula representation: multivariate setting
U-statistics represent a fundamental class of statistics from modeling quantities of interest defined by multi-subject responses. U-statistics generalise the empirical mean of a random variable X to sums over every m-tuple of distinct observations of X. Stute [Conditional U -statistics, Ann. Probab., 1991] introduced a class of estimators called conditional U-statistics. In the present work, we provide a new class of estimators of conditional U-statistics. More precisely, we investigate the conditional U-statistics based on copula representation. We establish the uniform-in-bandwidth consistency for the proposed estimator. In addition, uniform consistency is also established over φ ∈ Ƒ for a suitably restricted class Ƒ, in both cases bounded and unbounded, satisfying some moment conditions. Our theorems allow data-driven local bandwidths for these statistics. Moreover, in the same context, we show the uniform bandwidth consistency for the nonparametric Inverse Probability of Censoring Weighted estimators of the regression function under random censorship, which is of its own interest. We also consider the weak convergence of the conditional U-statistics processes. We discuss the wild bootstrap of the conditional U-statistics processes. These results are proved under some standard structural conditions on the Vapnik-Chervonenkis class of functions and some mild conditions on the model.
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来源期刊
CiteScore
1.70
自引率
0.00%
发文量
100
审稿时长
6-12 weeks
期刊介绍: Hacettepe Journal of Mathematics and Statistics covers all aspects of Mathematics and Statistics. Papers on the interface between Mathematics and Statistics are particularly welcome, including applications to Physics, Actuarial Sciences, Finance and Economics. We strongly encourage submissions for Statistics Section including current and important real world examples across a wide range of disciplines. Papers have innovations of statistical methodology are highly welcome. Purely theoretical papers may be considered only if they include popular real world applications.
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