References
- Rodriguez, D.; Herraiz, I.; Harrison, R. On software engineering repositories and their open problems. 2012 First International Workshop on Realizing AI Synergies in Software Engineering (RAISE). IEEE, 2012, pp. 52-56.
- Liu, C.; Fei, L.; Yan, X.; Han, J.; Midkiff, S.P. Statistical debugging: A hypothesis testing-based approach. IEEE Transactions on software engineering 2006, 32, 831-848. https://doi.org/10.1109/TSE.2006.105
- Voinea, L.; Telea, A. Mining software repositories with cvsgrab. Proceedings of the 2006 international workshop on Mining software repositories, 2006, pp. 167-168.
- Sliwerski, J.; Zimmermann, T.; Zeller, A. When do changes induce fixes? ' ACM sigsoft software engineering notes 2005, 30, 1-5. https://doi.org/10.1145/1082983.1083147
- Shippey, T.; Bowes, D.; Hall, T. Automatically identifying code features for software defect prediction: Using ast n-grams. Information and Software Technology 2019, 106, 142-160. https://doi.org/10.1016/j.infsof.2018.10.001
- Arshad, S.; Tjortjis, C. Clustering software metric values extracted from c# code for maintainability assessment. Proceedings of the 9th Hellenic Conference on Artificial Intelligence, 2016, pp. 1-4.
- Tjortjis, C. Data Mining Code Clustering (DMCC): An approach supporting software maintenance and comprehension. Technical report, Technical report, School of Science & Technology, International Hellenic . . . , 2019.
- Kanwal, J.; Basit, H.A.; Maqbool, O. Structural clones: An evolution perspective. 2018 IEEE 12th International Workshop on Software Clones (IWSC). IEEE, 2018, pp. 9-15.
- Hindle, A.; German, D.M.; Holt, R. What do large commits tell us? A taxonomical study of large commits. Proceedings of the 2008 international working conference on Mining software repositories, 2008, pp. 99-108.
- Tan, P.N.; Steinbach, M.; Kumar, V. Introduction to data mining, Pearson education. Inc., New Delhi 2006.
- Ekanayake, J.; Tappolet, J.; Gall, H.C.; Bernstein, A. Tracking concept drift of software projects using defect prediction quality. 2009 6th IEEE International Working Conference on Mining Software Repositories. IEEE, 2009, pp. 51-60.
- Zimmermann, T.; Zeller, A.; Weissgerber, P.; Diehl, S. Mining version histories to guide software changes. IEEE Transactions on Software Engineering 2005, 31, 429-445. https://doi.org/10.1109/TSE.2005.72
- Fu, S.; Shen, B. Code bad smell detection through evolutionary data mining. 2015 ACM/IEEE International Symposium on Empirical Software Engineering and Measurement (ESEM). IEEE, 2015, pp. 1-9.
- Naseem, R. An improved hierarchical clustering combination approach for software modularization. PhD thesis, Universiti Tun Hussein Onn Malaysia, 2017.
- Schafer, T.; Jonas, J.; Mezini, M. Mining framework usage changes from instantiation code. Proceedings of the 30th international conference on Software engineering, 2008, pp. 471-480.
- Raza, U.; Tretter, M. Predicting software outcomes using data mining and text mining. SAS Global Forum, 2007.
- Raghavan, S.; Rohana, R.; Leon, D.; Podgurski, A.; Augustine, V. Dex: A semantic-graph differencing tool for studying changes in large code bases. 20th IEEE International Conference on Software Maintenance, 2004. Proceedings. IEEE, 2004, pp. 188-197.
- Rolfsnes, T.; Di Alesio, S.; Behjati, R.; Moonen, L.; Binkley, D.W. Generalizing the analysis of evolutionary coupling for software change impact analysis. 2016 IEEE 23rd International Conference on Software Analysis, Evolution, and Reengineering (SANER). IEEE, 2016, Vol. 1, pp. 201-212.
- German, D.M. An empirical study of fine-grained software modifications. Empirical Software Engineering 2006, 11, 369-393. https://doi.org/10.1007/s10664-006-9004-6