Implicit feedback policies for COVID-19: why “zero-COVID” policies remain elusive
Author(s)
Jadbabaie, Ali; Sarker, Arnab; Shah, Devavrat
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<jats:title>Abstract</jats:title><jats:p>Successful epidemic modeling requires understanding the implicit feedback control strategies used by populations to modulate the spread of contagion. While such strategies can be replicated with intricate modeling assumptions, here we propose a simple model where infection dynamics are described by a three parameter feedback policy. Rather than model individuals as directly controlling the contact rate which governs the spread of disease, we model them as controlling the contact rate’s derivative, resulting in a dynamic rather than kinematic model. The feedback policy used by populations across the United States which best fits observations is proportional-derivative control, where learned parameters strongly correlate with observed interventions (e.g., vaccination rates and mobility restrictions). However, this results in a non-zero “steady-state” of case counts, implying current mitigation strategies cannot eradicate COVID-19. Hence, we suggest making implicit policies a function of cumulative cases, resulting in proportional-integral-derivative control with higher potential to eliminate COVID-19.</jats:p>
Date issued
2023-02-23Department
Massachusetts Institute of Technology. Department of Civil and Environmental Engineering; Massachusetts Institute of Technology. Institute for Data, Systems, and SocietyJournal
Scientific Reports
Publisher
Springer Science and Business Media LLC
Citation
Jadbabaie, Ali, Sarker, Arnab and Shah, Devavrat. 2023. "Implicit feedback policies for COVID-19: why “zero-COVID” policies remain elusive." Scientific Reports, 13 (1).
Version: Final published version