Pattern Extraction, Classification and Comparison Between Attribute Selection Measures
نویسندگان
چکیده
In this research, we have compared three different attribute selection measures algorithms. We have used ID3 algorithm, C4.5 algorithm and CART algorithm. All these algorithms are decision tree based algorithm. We have got the accuracy of three different algorithms and we observed that the accuracy of ID3 algorithm is greater than C4.5 algorithm. But the accuracy of CART algorithm is greater than other two algorithms. We have also calculated the time complexity of three different algorithms. To compare these algorithms, we have used heart disease dataset which is collected from UCI machine learning repository. Keywords— Pattern extraction, Classification, Decision Tree, ID3 algorithm, C4.5 algorithm, CART algorithm.
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