Author: Chattopadhyay, Subhankar; Maiti, Raju; Das, Samarjit; Biswas, Atanu
Title: Changeâ€point analysis through INAR process with application to some COVIDâ€19 data Cord-id: rcjiknm6 Document date: 2021_6_2
ID: rcjiknm6
Snippet: In this article, we consider the problem of changeâ€point analysis for the count time series data through an integerâ€valued autoregressive process of order 1 (INAR(1)) with timeâ€varying covariates. These types of features we observe in many realâ€life scenarios especially in the COVIDâ€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 timeâ€varying smoothing covariate.
Document: In this article, we consider the problem of changeâ€point analysis for the count time series data through an integerâ€valued autoregressive process of order 1 (INAR(1)) with timeâ€varying covariates. These types of features we observe in many realâ€life scenarios especially in the COVIDâ€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 timeâ€varying smoothing covariate. By using such model, we can model both the components in the active cases at timeâ€point t namely †(i) number of nonâ€recovery cases from the previous timeâ€point, and (ii) number of new cases at timeâ€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 COVIDâ€19 data sets and compare our proposed model to another PINAR(1) process which has timeâ€varying covariate but no changeâ€point, to demonstrate the overall performance of our proposed model.
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