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  • The classification and regression trees (CART) methodology plays an important role in many branches, especially when it is necessary to differentiate between two or more populations. The splitting rule in the CART is considered to be the decisive factor of the algorithm. The conventional method of the splitting has been proposed by Breiman et al. (1984). The contribution is focused on the implementation of the receiver operating characteristic curves (ROC) to the classification and regression tree analysis as the alternative splitting of nonterminal nodes. First, a brief introduction of the CART methodology and ROC curves theory (including basic properties and different techniques of estimation) is mentioned. Finally, two possibilities how to incorporate ROC curves into the CART construction are suggested.
  • The classification and regression trees (CART) methodology plays an important role in many branches, especially when it is necessary to differentiate between two or more populations. The splitting rule in the CART is considered to be the decisive factor of the algorithm. The conventional method of the splitting has been proposed by Breiman et al. (1984). The contribution is focused on the implementation of the receiver operating characteristic curves (ROC) to the classification and regression tree analysis as the alternative splitting of nonterminal nodes. First, a brief introduction of the CART methodology and ROC curves theory (including basic properties and different techniques of estimation) is mentioned. Finally, two possibilities how to incorporate ROC curves into the CART construction are suggested. (en)
Title
  • The Application of the ROC Curve to Classification and Regression Trees
  • The Application of the ROC Curve to Classification and Regression Trees (en)
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  • The Application of the ROC Curve to Classification and Regression Trees
  • The Application of the ROC Curve to Classification and Regression Trees (en)
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  • RIV/60162694:G42__/11:00502722!RIV14-MO0-G42_____
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  • Classification and Regression Trees; CART; Splitting rule; Receiver operating characteristic curve; ROC (en)
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