"A Framework for Software Defect Prediction Using Neural Networks"
written by Vipul Vashisht, Manohar Lal, G. S. Sureshchandar,
published by Journal of Software Engineering and Applications, Vol.8 No.8, 2015
has been cited by the following article(s):
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[13] Learning from Imbalanced Data for Predicting the Number of Software Defects
[14] Industrial Engineering Solution in the Industry: Artificial Neural Network Forecasting Approach
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[15] A Proposed Methodology for Phase Wise Software Testing Using Soft Computing
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[16] Software Defect Prediction using Feature Selection and Random Forest Algorithm
[17] Defect Prediction Framework Using Neural Networks for Software Enhancement Projects
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[18] Neural Network with Hybrid Shuffled Frog
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[19] Neural Network with Hybrid Shuffled Frog: Algorithm for Software Defect Prediction
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[20] Improved approach for software defect prediction using artificial neural networks