Software Defect Prediction Using Data Mining Techniques

Authors

  • Swathi K Department of Computer Science and Engineering, VTU Belagavi, India
  • Arun Biradar Department of Computer Science and Engineering, VTU Belagavi, India

Keywords:

Software defects, bugs, prediction, quality, reliability

Abstract

The accomplishment of any software framework completely relies upon the exactness of the consequences of the framework and whether it is with no blemishes. Software deformity prediction issues have an incredibly gainful research potential. Software defects are the serious issue in any software industry. Software defects diminish the software quality, increment costing yet it additionally suspends the improvement plan. Software bugs lead to off base and discrepant outcomes. As a result of this, the software ventures run late, are dropped or become untrustworthy after sending. Quality and reliability are the real difficulties looked in a protected software improvement process. There are real software cost overwhelms when a software item with bugs in its different segments is conveyed next to client. The software distribution center is generally utilized as record keeping vault which is for the most part required while including new highlights or fixing bugs. Numerous information mining strategies and dataset store are accessible to foresee the software defects. 'Bug prediction procedure' is a significant part in software building territory for most recent multi decade. Software bugs which identify at beginning period are straightforward and cheap for redressing the software. Software quality can be upgraded by utilizing the bug prediction strategies and the software bug can be decreased whenever connected precisely. Needy and autonomous variable are considered in Software bug prediction. To anticipate deformity dependent on software measurements software prediction model are utilized. Measurements based characterization sort part as faulty and non-inadequate.

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Published

2025-11-26

How to Cite

[1]
S. K and A. Biradar, “Software Defect Prediction Using Data Mining Techniques”, Int. J. Comp. Sci. Eng., vol. 7, no. 15, pp. 284–287, Nov. 2025.