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Subpopulation-specific machine learning prognosis for underrepresented patients with double prioritized bias correction
45
Zitationen
5
Autoren
2022
Jahr
Abstract
Biases exist in the widely accepted one-machine-learning-model-fits-all-population approach. We invent a bias correction method that produces specialized machine learning prognostication models for underrepresented racial and age groups. This technique may reduce potentially life-threatening prediction mistakes for minority populations.
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