使用乘法器的非参数变点问题

B. Rémillard
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引用次数: 3

摘要

尝试使用经验过程对多变量数据执行非参数变化点检验比在单变量情况下要困难得多,因为极限分布取决于未知的联合分布函数或其相关的copula。为了解决这个问题,我们将乘子中心极限定理推广到伪观测的经验过程中,以建立这些过程的渐近独立副本。文中给出了全分布和相关联结的动态模型的改进,并给出了在i.i.d观测的变点问题中的应用实例。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-Parametric Change Point Problems Using Multipliers
Trying to perform non-parametric change point tests for multivariate data using empirical processes is much more difficult that in the univariate case, since the limiting distribution depends on the unknown joint distribution function or its associated copula. In order to solve this problem, we extend the multiplier central limit theorem to empirical processes of pseudo-observations to build asymptotically independent copies of these processes. Examples of applications to change point problems for i.i.d observations and innovations of dynamic models are given, both for the full distribution and the associated copula.
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