GRENZE International Journal of Engineering and Technology
Authors:
A. Sathiyaraj, T. G. Ruby Angel, Anil V. Turukmane, Ramkumar D, Y.Guravaiah
Volume:
10
Issue:
2
Grenze ID:
01.GIJET.10.2.328
Pages:
4844-4850
Abstract
The entire success of software is impacted by software bug prediction (SBP), a crucial
part of the software development and maintenance life cycles. It is necessary to anticipate issues
in order to increase the software's dependability, efficiency, and cost. In spite of the fact that a
number of methods have been put out in the literature, it is difficult to create a reliable bug
prediction model. In this paper, a machine learning (ML) based prediction method for software
issues is introduced. Algorithms for guided machine learning that are based on historical data
have been used to predict software errors. Two of the classifiers are Support Vector Machine and
Naive Bayes (NB). How accurate and useful ML methods can be employed was demonstrated
through the evaluation process. Included is the utilization of a comparative measure.