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Inference for multiple change-points in generalized integer-valued autoregressive model

Authors :
Sheng, Danshu
Wang, Dehui
Publication Year :
2024

Abstract

In this paper, we propose a computationally valid and theoretically justified methods, the likelihood ratio scan method (LRSM), for estimating multiple change-points in a piecewise stationary generalized conditional integer-valued autoregressive process. LRSM with the usual window parameter $h$ is more satisfied to be used in long-time series with few and even change-points vs. LRSM with the multiple window parameter $h_{mix}$ performs well in short-time series with large and dense change-points. The computational complexity of LRSM can be efficiently performed with order $O((\log n)^3 n)$. Moreover, two bootstrap procedures, namely parametric and block bootstrap, are developed for constructing confidence intervals (CIs) for each of the change-points. Simulation experiments and real data analysis show that the LRSM and bootstrap procedures have excellent performance and are consistent with the theoretical analysis.<br />Comment: 41 pages, 6 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.13834
Document Type :
Working Paper