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Prequential omnibus goodness-of-fit tests for stochastic processes: A numerical study

机译:随机过程的先验综合拟合优度测试:一项数值研究

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This article is a contribution to the study of an omnibus goodness-of-fit (Gof) test based on Rosenblatt Probability Integral Transform (RPIT) within Dawid's prequential framework. This Gof test is easy to use since it has a common test statistic (with apparently the same asymptotic distribution) for a wide range of stochastic models. Intensive Monte-Carlo simulations are presented to investigate the behavior of this test for several stochastic models: renewal, autoregressive (AR, ARMA, ARCH, GARCH) and Poisson processes, generalized linear models... These simulations suggest that the RPIT test could be used to test the fit of a wide range of stochastic models but it may be not powerful when compared to Gof tests specifically designed for the tested processes. It is also conjectured that this test is still appropriate for testing the Gof of any discrete-time stochastic process provided that efficient estimators are used.
机译:本文是对在戴维德的先验框架内基于Rosenblatt概率积分变换(RPIT)的综合拟合优度(Gof)测试的研究的一项贡献。该Gof检验​​易于使用,因为它具有适用于各种随机模型的通用检验统计量(显然具有相同的渐近分布)。提出了密集的蒙特卡洛仿真,以研究该测试对几种随机模型的行为:更新,自回归(AR,ARMA,ARCH,GARCH)和泊松过程,广义线性模型...这些仿真表明RPIT测试可以用于测试各种随机模型的拟合度,但与专门为被测试流程设计的Gof测试相比,它可能没有强大的功能。还可以推测,如果使用有效的估计量,则该测试仍适用于测试任何离散时间随机过程的Gof。

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