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Data Driven Contagion Risk Management in Low-Income Countries using Machine Learning Applications with COVID-19 in South Asia

Author

Listed:
  • Abu S. Shonchoy

    (Department of Economics, Florida International University)

  • Moogdho M. Mahzab

    (Stanford University)

  • Towhid I. Mahmood

    (Texas Tech University)

  • Manhal Ali

    (University of Leeds)

Abstract

In the absence of real-time surveillance data, it is difficult to derive an early warning system and potential outbreak locations with the existing epidemiological models, especially in resource-constrained countries. We proposed a Contagion Risk Index (CR-Index) - based on publicly available national statistics - founded on communicable disease spreadability vectors. Utilizing the daily COVID-19 data (positive cases and deaths) from 2020-2022, we developed country-specific and sub-national CR-Index for South Asia (India, Pakistan, and Bangladesh) and identified potential infection hotspots-aiding policymakers with efficient mitigation planning. Across the study period, the week-by-week and fixed-effects regression estimates demonstrate a strong correlation between the proposed CR-Index and sub-national (district-level) COVID-19 statistics. We validated the CR-Index using machine learning methods by evaluating the out-of-sample predictive performance. Machine learning driven validation showed that the CR-Index can correctly predict districts with high incidents of COVID-19 cases and deaths more than 85% of the time. This proposed CR-Index is a simple, replicable, and easily interpretable tool that can help low-income countries prioritize resource mobilization to contain the disease spread and associated crisis management with global relevance and applicability. This index can also help to contain future pandemics (and epidemics) and manage their far-reaching adverse consequences.

Suggested Citation

  • Abu S. Shonchoy & Moogdho M. Mahzab & Towhid I. Mahmood & Manhal Ali, 2023. "Data Driven Contagion Risk Management in Low-Income Countries using Machine Learning Applications with COVID-19 in South Asia," Working Papers 2302, Florida International University, Department of Economics.
  • Handle: RePEc:fiu:wpaper:2302
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    File URL: https://economics.fiu.edu/research/pdfs/2023_working_papers/2302.pdf
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    Cited by:

    1. Abu S. Shonchoy & Shatakshee Dhongde & Erdal Asker, 2023. "COVID-19 Lockdown and Neonatal Mortality: Evidence from India," Working Papers 2303, Florida International University, Department of Economics.

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