Time Series Analysis of COVID-19 Infection Curve: A Change-Point Perspective
Feiyu Jiang,
Zifeng Zhao and
Xiaofeng Shao
Papers from arXiv.org
Abstract:
In this paper, we model the trajectory of the cumulative confirmed cases and deaths of COVID-19 (in log scale) via a piecewise linear trend model. The model naturally captures the phase transitions of the epidemic growth rate via change-points and further enjoys great interpretability due to its semiparametric nature. On the methodological front, we advance the nascent self-normalization (SN) technique (Shao, 2010) to testing and estimation of a single change-point in the linear trend of a nonstationary time series. We further combine the SN-based change-point test with the NOT algorithm (Baranowski et al., 2019) to achieve multiple change-point estimation. Using the proposed method, we analyze the trajectory of the cumulative COVID-19 cases and deaths for 30 major countries and discover interesting patterns with potentially relevant implications for effectiveness of the pandemic responses by different countries. Furthermore, based on the change-point detection algorithm and a flexible extrapolation function, we design a simple two-stage forecasting scheme for COVID-19 and demonstrate its promising performance in predicting cumulative deaths in the U.S.
Date: 2020-07
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http://arxiv.org/pdf/2007.04553 Latest version (application/pdf)
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Journal Article: Time series analysis of COVID-19 infection curve: A change-point perspective (2023) 
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Persistent link: https://EconPapers.repec.org/RePEc:arx:papers:2007.04553
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