Change-point analysis through integer-valued autoregressive process with application to some COVID-19 data.

IF 0.8 3区 数学 Q2 STATISTICS & PROBABILITY Statistica Neerlandica Pub Date : 2022-02-01 Epub Date: 2021-07-11 DOI:10.1111/stan.12251
Subhankar Chattopadhyay, Raju Maiti, Samarjit Das, Atanu Biswas
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引用次数: 4

Abstract

In this article, we consider the problem of change-point analysis for the count time series data through an integer-valued autoregressive process of order 1 (INAR(1)) with time-varying covariates. These types of features we observe in many real-life scenarios especially in the COVID-19 data sets, where the number of active cases over time starts falling and then again increases. In order to capture those features, we use Poisson INAR(1) process with a time-varying smoothing covariate. By using such model, we can model both the components in the active cases at time-point t namely, (i) number of nonrecovery cases from the previous time-point and (ii) number of new cases at time-point t. We study some theoretical properties of the proposed model along with forecasting. Some simulation studies are performed to study the effectiveness of the proposed method. Finally, we analyze two COVID-19 data sets and compare our proposed model with another PINAR(1) process which has time-varying covariate but no change-point, to demonstrate the overall performance of our proposed model.

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整数值自回归过程的变点分析与部分COVID-19数据的应用
本文通过具有时变协变量的1阶整数值自回归过程(INAR(1)),研究了计数时间序列数据的变点分析问题。我们在许多现实场景中观察到这些类型的特征,特别是在COVID-19数据集中,随着时间的推移,活跃病例的数量开始下降,然后再次增加。为了捕获这些特征,我们使用带时变平滑协变量的泊松INAR(1)过程。通过使用该模型,我们可以对时间点t的活动病例的组成部分进行建模,即(i)前一个时间点的未恢复病例数和(ii)时间点t的新病例数。我们研究了所提出模型的一些理论性质以及预测。通过仿真研究验证了该方法的有效性。最后,我们分析了两个COVID-19数据集,并将我们提出的模型与另一个具有时变协变量但没有变化点的PINAR(1)过程进行了比较,以证明我们提出的模型的整体性能。
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来源期刊
Statistica Neerlandica
Statistica Neerlandica 数学-统计学与概率论
CiteScore
2.60
自引率
6.70%
发文量
26
审稿时长
>12 weeks
期刊介绍: Statistica Neerlandica has been the journal of the Netherlands Society for Statistics and Operations Research since 1946. It covers all areas of statistics, from theoretical to applied, with a special emphasis on mathematical statistics, statistics for the behavioural sciences and biostatistics. This wide scope is reflected by the expertise of the journal’s editors representing these areas. The diverse editorial board is committed to a fast and fair reviewing process, and will judge submissions on quality, correctness, relevance and originality. Statistica Neerlandica encourages transparency and reproducibility, and offers online resources to make data, code, simulation results and other additional materials publicly available.
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