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Calibration / Isotonic regression / Calibrated probability assessment / Support vector machine / Logistic regression / Statistics / Regression analysis / Statistical classification
Date: 2013-05-14 23:06:47
Calibration
Isotonic regression
Calibrated probability assessment
Support vector machine
Logistic regression
Statistics
Regression analysis
Statistical classification

Predicting Good Probabilities With Supervised Learning Alexandru Niculescu-Mizil

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Source URL: machinelearning.wustl.edu

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