Classification Using Decision Trees
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چکیده
Data mining term is mainly used for the specific set of six activities namely Classification, Estimation, Prediction, Affinity grouping or Association rules, Clustering, Description and Visualization. The first three tasks classification, estimation and prediction are all examples of directed data mining or supervised learning. Decision Tree (DT) is one of the most popular choices for learning from feature based examples. It has undergone a number of alterations to deal with the language, memory requirements and efficiency considerations.
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