Predicting COVID-19 mortality risk in Toronto, Canada: a comparison of tree-based and regression-based machine learning methods

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作者
Cindy Feng
George Kephart
Elizabeth Juarez-Colunga
机构
[1] Department of Community Health and Epidemiology,
[2] Faculty of Medicine,undefined
[3] Dalhousie University,undefined
[4] Department of Biostatistics and Informatics,undefined
[5] University of Colorado Anschutz Medical Campus,undefined
关键词
COVID-19 mortality; Predictive model; Generalized additive model; Classification trees; Extreme gradient boosting;
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