An Algorithm for Better Decision Tree
نویسندگان
چکیده
The present paper aims at constructing the decision tree for a given database which adopts an improved ID3 decision tree algorithm to implement data mining in order to predict the output. The database is generated using the sampling techniques and the classification algorithm is applied on the samples. The obtained results are compared with experimental results in order to verify the validity and accuracy of the developed model. KeywordsSampling, Decision Tree, ID3, classification
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