| Literature DB >> 36213620 |
Yunwei Cui1, Rongning Wu2, Qi Zheng3.
Abstract
We apply a three-step sequential procedure to estimate the change-point of count time series. Under certain regularity conditions, the estimator of change-point converges in distribution to the location of the maxima of a two-sided random walk. We derive a closed-form approximating distribution for the maxima of the two-sided random walk based on the invariance principle for the strong mixing processes, so that the statistical inference for the true change-point can be carried out. It is for the first time that such properties are provided for integer-valued time series models. Moreover, we show that the proposed procedure is applicable for the integer-valued autoregressive conditional heteroskedastic (INARCH) models with Poisson or negative binomial conditional distribution. In simulation studies, the proposed procedure is shown to perform well in locating the change-point of INARCH models. And, the procedure is further illustrated with empirical data of weekly robbery counts in two neighborhoods of Baltimore City.Entities:
Keywords: Poisson INARCH model; change-point estimation; integer-valued time series; negative binomial INARCH model
Year: 2020 PMID: 36213620 PMCID: PMC9540642 DOI: 10.1111/sjos.12489
Source DB: PubMed Journal: Scand Stat Theory Appl ISSN: 0303-6898 Impact factor: 1.040