Modelling COVID-19 -- I A dynamic SIR(D) with application to Indian data
Madhuchhanda Bhattacharjee, Arup Bose

TL;DR
This paper introduces a dynamic, adaptive SIR(D) epidemiological model tailored for Indian COVID-19 data, capturing regional variations and enabling accurate local predictions of infection trajectories and reproduction numbers.
Contribution
The paper presents a novel adaptive dynamic SIR(D) model that automatically adjusts to external factors and regional differences, improving local epidemic predictions over traditional aggregate models.
Findings
Significant regional variation in COVID-19 reproduction numbers across Indian states.
The model accurately predicts infection trends with high agreement to actual data.
Reproduction numbers exceed 2 in three regions, indicating high transmission levels.
Abstract
We propose an epidemiological model using an adaptive dynamic three compartment (with four states) SIR(D) model. Our approach is similar to non-parametric curve fitting in spirit and automatically adapts to key external factors, such as interventions, while retaining the parsimonious nature of the standard SIR(D) model. Initial dynamic temporal estimates of the model parameters are obtained by minimising the aggregate residual sum of squares across the number of infections, recoveries, and fatalities, over a chosen lag period. Then a geometric smoother is applied to obtain the final time series of estimates. These estimates are used to obtain dynamic temporal robust estimates of the key feature of this pandemic, namely the "reproduction number". We illustrate our method on the Indian COVID-19 data for the period March 14 - August 31, 2020. The time series data plots of the 36 states and…
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Taxonomy
TopicsCOVID-19 epidemiological studies · COVID-19 Pandemic Impacts
