Predicting hospital associated disability from imbalanced data using supervised learning

Artificial Intelligence in Medicine - Tập 95 - Trang 88-95 - 2019
Mirka Saarela1, Olli‐Pekka Ryynänen2,3, Sami Äyrämö1
1University of Jyvaskyla, Faculty of Information Technology, P.O. Box 35, FI-40014, University of Jyvaskyla, Finland
2Department of Public Health and Clinical Nutrition, University of Eastern Finland, Kuopio, Finland
3General Practice Unit, Kuopio University Hospital, Primary Health Care, Kuopio, Finland

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