Software Defect Predication using Classifier Mining

  • K.B.S Sastry Andhra Loyola College,Vijayawada
  • Dr. R Satya Prasad Acharya Nagarjuna University
Keywords: Software defect prediction, classification Algorithm, Confusion matrix

Abstract

There has been rapid growth of software development. Due to various causes, the software comes with many defects. In Software development process, testing of software is the main phase which reduces the defects of the software. If a developer or a tester can predict the software defects properly then, it reduces the cost, time and e ort. In this paper, we show a comparative analysis of software defect prediction based on classification rule mining. We propose a scheme for this process and we choose different classification algorithms. Showing the comparison of predictions in software defects analysis. This evaluation analyzes the prediction performance of competing learning schemes for given historical data sets(NASA MDP Data Set). The result of this scheme evaluation shows that we have to choose different classifier rule for different data set

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Author Biographies

K.B.S Sastry, Andhra Loyola College,Vijayawada

Lecturer 

Dept. of Computer Science

Dr. R Satya Prasad, Acharya Nagarjuna University

Associate Professor

Dept. of Computer Science

Published
2015-04-30
How to Cite
Sastry, K., & Prasad, D. R. S. (2015). Software Defect Predication using Classifier Mining. IJRDO -Journal of Computer Science Engineering, 1(4), 185-205. https://doi.org/10.53555/cse.v1i4.733