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Feature Selection Using Decision Tree Induction in Class level Metrics Dataset for Software Defect Predictions

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Figure

Fig 2: Frequency of the variables appeared in the rules
Table 2: ROC values for the classifiers
Table 3 gives the MAE and RMSE values for original and reduced feature sets. These values are depicted graphically in

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