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An introduction to ROC analysis

Pattern recognition letters, v.27 no.8, 2006년, pp.861 - 874  

Fawcett, Tom (Institute for the Study of Learning and Expertise, 2164 Staunton Court, Palo Alto, CA 94306, USA)

Abstract AI-Helper 아이콘AI-Helper

AbstractReceiver operating characteristics (ROC) graphs are useful for organizing classifiers and visualizing their performance. ROC graphs are commonly used in medical decision making, and in recent years have been used increasingly in machine learning and data mining research. Although ROC graphs ...

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참고문헌 (31)

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