C. Catal and B. Diri, A systematic review of software fault prediction studies, Expert Syst. Appl, vol.36, issue.4, pp.7346-7354, 2009.

K. Geoffrey, C. F. Gill, and . Kemerer, A systematic literature review on fault prediction performance in software engineering, IEEE transactions on software engineering, vol.17, issue.12, pp.1276-1304, 1991.

K. Herzig, S. Just, and A. Zeller, It's not a bug, it's a feature: How misclassification impacts bug prediction, Proceedings of the 2013 International Conference on Software Engineering, ICSE '13, pp.392-401, 2013.

R. Hosseini, B. Turhan, and D. Gunarathna, A systematic literature review and meta-analysis on cross project defect prediction, IEEE Transactions on Software Engineering, vol.11, p.2017

S. Levin and A. Yehudai, Towards software analytics: Modeling maintenance activities, 2019.

N. Li, M. Shepperd, and Y. Guo, A systematic review of unsupervised learning techniques for software defect prediction, 2019.

R. Malhotra, Mockus and Votta. Identifying reasons for software changes using historic databases, A systematic review of machine learning techniques for software fault prediction. Applied Soft Computing, vol.27, pp.120-130, 2000.

T. M. Pigoski, Practical Software Maintenance: Best Practices for Managing Your Software Investment. Wiley Publishing, p.9780471170013, 1996.

D. Port and B. Taber, An empirical study of process policies and metrics to manage productivity and quality for maintenance of critical software systems at the jet propulsion laboratory, Proceedings of the 12th ACM/IEEE International Symposium on Empirical Software Engineering and Measurement, p.37, 2018.

H. Zhang and S. Kim, Monitoring software quality evolution for defects, IEEE Software, vol.27, pp.58-64, 2010.