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Recent Methods from Statistics and Machine Learning for Credit Scoring

Recent Methods from Statistics and Machine Learning for Credit Scoring - Paperback

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Availability:In StockContributor:Anne KrausPublish date:2014-07-08Pages:166
Language:EnglishPublisher:CuvillierISBN-13:9783954047369ISBN-10:3954047365UPC:9783954047369Book Category:MathematicsBook Subcategory:Probability & StatisticsSize:8.27 x 5.83 x 0.35 inchesWeight:0.4497Product ID:SCN79C7321
Credit scoring models are the basis for financial institutions like retail and consumer credit banks. The purpose of the models is to evaluate the likelihood of credit applicants defaulting in order to decide whether to grant them credit. The area under the receiver operating characteristic (ROC) curve (AUC) is one of the most commonly used measures to evaluate predictive performance in credit scoring. The aim of this thesis is to benchmark different methods for building scoring models in order to maximize the AUC. While this measure is used to evaluate the predictive accuracy of the presented algorithms, the AUC is especially introduced as direct optimization criterion.
Language:EnglishPublisher:CuvillierISBN-13:9783954047369ISBN-10:3954047365UPC:9783954047369Book Category:MathematicsBook Subcategory:Probability & StatisticsSize:8.27 x 5.83 x 0.35 inchesWeight:0.4497Product ID:SCN79C7321
Publisher: Cuvillier

Contributor(s)

Anne Kraus

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