Software Defect Prediction u sing Support Vectorised Data and Intelligent Techniques

  • Kumar* K
  • et al.
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Abstract

Software enhances the working capability of any business. Developing such a software entrusts the developing organization to build defect free software. In this context we have used PC1 dataset(NASA dataset) which has sufficient parameters for analysis. Intelligent techniques using different methodologies have been applied exhaustively on the PC1 data to find out the best intelligent technique for software defect. As the PC1 data is highly imbalanced data, there was biasness in the prediction of the intelligent techniques. Hence, to overcome this issue, in this paper we tried to propose best balancing method along with the intelligent technique to predict the software defect accurately.

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Kumar*, K. V., & Prasad, C. G. (2020). Software Defect Prediction u sing Support Vectorised Data and Intelligent Techniques. International Journal of Innovative Technology and Exploring Engineering, 9(5), 73–79. https://doi.org/10.35940/ijitee.e2124.039520

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