泊松和负二项计数时间序列的建模和诊断检测

Pub Date : 2023-12-13 DOI:10.1007/s00184-023-00934-0
Boris Aleksandrov, Christian H. Weiß, Simon Nik, Maxime Faymonville, Carsten Jentsch
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引用次数: 0

摘要

当对无界计数进行建模时,通常假设它们的边际遵循泊松(Poi)或负二项(NB)分布。为了检验这样的零假设,我们提出了基于依赖于某些矩属性的统计的拟合优度(GoF)检验。与迄今为止在计数数据文献中提出的大多数方法相比,我们没有将自己限制在特定的低阶矩上,而是考虑一类灵活的广义矩函数来构建模型诊断检验。这些测试包括基于高阶阶乘矩的gof测试,这些测试特别适用于存在任何阶阶乘矩的简单封闭表达式的Poi-或nb -分布,但也适用于Poi-或nb -分布依赖于各自的Stein恒等式的gof测试。在时间相关的情况下,在轻度混合条件下,我们分别为具有Poi-或nb -边际的广泛平稳过程,导出了基于高阶阶乘矩的GoF检验的渐近理论。该家族还包括一种nb自回归模型,我们在其中澄清了文献中引起的一些混淆。此外,对于独立和同分布计数的情况,我们证明了依赖于Stein恒等式的gof检验的渐近正态性结果,并简要讨论了如何使用其统计量来定义综合gof检验。通过对渐近和自举实现的模拟研究了测试的性能,并考虑了功率分析的各种替代方案。本文使用了一个TeX编辑器每日下载次数的数据示例来说明建议的gof测试的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Modelling and diagnostic tests for Poisson and negative-binomial count time series

When modelling unbounded counts, their marginals are often assumed to follow either Poisson (Poi) or negative binomial (NB) distributions. To test such null hypotheses, we propose goodness-of-fit (GoF) tests based on statistics relying on certain moment properties. By contrast to most approaches proposed in the count-data literature so far, we do not restrict ourselves to specific low-order moments, but consider a flexible class of functions of generalized moments to construct model-diagnostic tests. These cover GoF-tests based on higher-order factorial moments, which are particularly suitable for the Poi- or NB-distribution where simple closed-form expressions for factorial moments of any order exist, but also GoF-tests relying on the respective Stein’s identity for the Poi- or NB-distribution. In the time-dependent case, under mild mixing conditions, we derive the asymptotic theory for GoF tests based on higher-order factorial moments for a wide family of stationary processes having Poi- or NB-marginals, respectively. This family also includes a type of NB-autoregressive model, where we provide clarification of some confusion caused in the literature. Additionally, for the case of independent and identically distributed counts, we prove asymptotic normality results for GoF-tests relying on a Stein identity, and we briefly discuss how its statistic might be used to define an omnibus GoF-test. The performance of the tests is investigated with simulations for both asymptotic and bootstrap implementations, also considering various alternative scenarios for power analyses. A data example of daily counts of downloads of a TeX editor is used to illustrate the application of the proposed GoF-tests.

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