THE EFFECT OF SOFTWARE METRICS ON PERFORMANCE OF SOFTWARE DEFECT CLASSIFICATION WITH ANN

  • Achmad Zainudin Nur ULM
  • Mohammad Reza Faisal
  • Friska Abadi
  • Irwan Budiman
  • Rudy Herteno
Keywords: Software Defect Prediction, Artificial Neural Network, Area Under Curve, NASA MDP, Cross Validation

Abstract

Software Defect Prediction has an important role in quality software. This study uses 12 D datasets from NASA MDP which then features a selection of metrics categories software. Feature selection is performed to find out metrics software which are influential in predicting defects software. After the feature selection of the metric software category, classification will be performed using the algorithm Artificial Neural Network and validated with 5-Fold Cross Validation. Then conducted an evaluation with Area Under Curve (AUC), From datasets D” 12 NASA MDP that were evaluated with AUC, PC4, PC1 and PC3 datasets obtained the best AUC performance values. Each value is 0.915, 0.828, and 0.826 using the algorithm Artificial Neural Network.

Published
2020-06-29
How to Cite
Zainudin Nur, A., Mohammad Reza Faisal, Friska Abadi, Irwan Budiman, & Rudy Herteno. (2020). THE EFFECT OF SOFTWARE METRICS ON PERFORMANCE OF SOFTWARE DEFECT CLASSIFICATION WITH ANN. Journal of Data Science and Software Engineering, 1(01), 33-42. https://doi.org/10.20527/jdsse.v1i01.5
Section
Articles