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Predictors of COVID-19 vaccination rate in USA: A machine learning approach

Syed Muhammad Ishraque Osman, Ahmed Sabit

2022Machine Learning with Applications14 citationsDOIOpen Access PDF

Abstract

In this study, we examine state-level features and policies that are most important in achieving a threshold level vaccination rate to curve the effects of the COVID-19 pandemic. We employ CHAID, a decision tree algorithm, on three different model specifications to answer this question based on a dataset that includes all the states in the United States. Workplace travel emerges as the most important predictor; however, the governors' political affiliation (PA) replaces it in a more conservative feature set that includes economic features and the growth rate of COVID-19 cases. We also employ several alternative algorithms as a robustness check. Results from these checks confirm our original findings regarding workplace travels and political affiliation. The accuracy under different model specifications ranges from 80%-88%, whereas the sensitivity is between 92.5%-100%. Our findings provide actionable policy insights to increase vaccination rates and combat the COVID-19 pandemic.

Topics & Concepts

Coronavirus disease 2019 (COVID-19)CHAIDPandemicRobustness (evolution)Artificial intelligenceDecision treeComputer scienceVaccinationMachine learningPoliticsSet (abstract data type)2019-20 coronavirus outbreakOperations researchEconometricsActuarial sciencePolitical scienceBusinessEconomicsEngineeringMedicineVirologyLawDiseaseOutbreakChemistryBiochemistryPathologyProgramming languageGeneInfectious disease (medical specialty)COVID-19 epidemiological studiesVaccine Coverage and HesitancyCOVID-19 Pandemic Impacts
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