Sep 29, 2014 · A key issue in decision tree (DT) induction with continuous valued attributes is to design an effective strategy for splitting nodes.
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Abstract—A key issue in decision tree (DT) induction with continuous valued attributes is to design an effective strategy for splitting nodes.
A key issue in decision tree (DT) induction with continuous valued attributes is to design an effective strategy for splitting nodes.
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A continuous-valued attribute takes on numerical values (integer or real). In general, it is an attribute that has a linearly ordered range of values.
Missing: Segment | Show results with:Segment
Segment Based Decision Tree Induction With Continuous ... - dblp
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Bibliographic details on Segment Based Decision Tree Induction With Continuous Valued Attributes.
Aug 22, 2023 · The decision tree induction algorithm for continuous-valued attributes, based on unbalanced cut points, is efficient for mining decision ...
A continuous-valued attribute takes on numerical values (integer or real). In general, it is an attribute that has a linearly ordered range of values.
Missing: Segment | Show results with:Segment
A novel algorithm so-called VFC4.5 is presented, which proposes to simply reduce the number of candidate cut points by using arithmetic mean and median to ...