Optimized scoring systems : toward trust in machine learning for healthcare and criminal justice
Year of publication: |
September-October 2018
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Authors: | Rudin, Cynthia ; Ustun, Berk |
Published in: |
Interfaces : the INFORMS journal on the practice of operations research. - Catonsville, MD : INFORMS, ISSN 0092-2102, ZDB-ID 120785-4. - Vol. 48.2018, 5, p. 449-466
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Subject: | machine learning | sparse linear models | scoring systems | trust | transparency | interpretability | healthcare | criminal justice | recidivism | Künstliche Intelligenz | Artificial intelligence | Vertrauen | Confidence | Gesundheitsversorgung | Health care | Gesundheitswesen | Health care system | Kriminalität | Crime | Kriminalpolitik | Criminal policy |
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