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Algorithmic fairness in pandemic forecasting: lessons from COVID-19

Thomas C. Tsai, Sercan Ö. Arık, Benjamin H. Jacobson, Jinsung Yoon, Nathanael C. Yoder, Dario Sava, Margaret Mitchell, Garth Graham, Tomas Pfister

2022npj Digital Medicine18 citationsDOIOpen Access PDF

Abstract

Racial and ethnic minorities have borne a particularly acute burden of the COVID-19 pandemic in the United States. There is a growing awareness from both researchers and public health leaders of the critical need to ensure fairness in forecast results. Without careful and deliberate bias mitigation, inequities embedded in data can be transferred to model predictions, perpetuating disparities, and exacerbating the disproportionate harms of the COVID-19 pandemic. These biases in data and forecasts can be viewed through both statistical and sociological lenses, and the challenges of both building hierarchical models with limited data availability and drawing on data that reflects structural inequities must be confronted. We present an outline of key modeling domains in which unfairness may be introduced and draw on our experience building and testing the Google-Harvard COVID-19 Public Forecasting model to illustrate these challenges and offer strategies to address them. While targeted toward pandemic forecasting, these domains of potentially biased modeling and concurrent approaches to pursuing fairness present important considerations for equitable machine-learning innovation.

Topics & Concepts

PandemicCoronavirus disease 2019 (COVID-19)2019-20 coronavirus outbreakSevere acute respiratory syndrome coronavirus 2 (SARS-CoV-2)Ethnic groupPublic relationsComputer scienceData sciencePolitical scienceEconomicsMedicinePathologyDiseaseInfectious disease (medical specialty)LawVirologyOutbreakCOVID-19 epidemiological studiesCOVID-19 and healthcare impactsPublic Health Policies and Education
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