A Deep Learning Approach for Cost Effective Learning of Defective Prone Modules

 
 
 
  • Abstract
  • Keywords
  • References
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  • Abstract


    Software Defect Prediction is a cost effective problem, in which the cost of majority class (Non defective) is low compared with the cost of minority class ( Defective). Learning from imbalanced data bias the classifier towards majority class. In this paper we are proposing a deep learning approach for classifying Imbalanced and Cost effective data. We applied Principle Component Analysis for feature selection and then constructed a classifier using Adaptive Neuro Fuzzy Inference System. The performance of the classifier was evaluated using AuC measures. We observed the performance of the classifier was improved compared with neural networks.

     

     

     

  • Keywords


    Software Defect Prediction, Imbalanced Data, Principle Component Analysis, Adaptive Neuro Fuzzy Inference System .

  • References


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Article ID: 28823
 
DOI: 10.14419/ijet.v7i4.16.28823




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