Building Defect Prediction Models in Practice

Author:

Ramler Rudolf1,Himmelbauer Johannes1,Natschläger Thomas1

Affiliation:

1. Software Competence Center Hagenberg, Austria

Abstract

The information about which modules of a future version of a software system will be defect-prone is a valuable planning aid for quality managers and testers. Defect prediction promises to indicate these defect-prone modules. In this chapter, building a defect prediction model from data is characterized as an instance of a data-mining task, and key questions and consequences arising when establishing defect prediction in a large software development project are discussed. Special emphasis is put on discussions on how to choose a learning algorithm, select features from different data sources, deal with noise and data quality issues, as well as model evaluation for evolving systems. These discussions are accompanied by insights and experiences gained by projects on data mining and defect prediction in the context of large software systems conducted by the authors over the last couple of years. One of these projects has been selected to serve as an illustrative use case throughout the chapter.

Publisher

IGI Global

Reference73 articles.

1. Afzal, W. (2010). Using Faults-Slip-Through Metric as a Predictor of Fault-Proneness. In Proceedings of the 17th Asia Pacific Software Engineering Conference APSEC 2010 (pp. 414-422). Los Alamitos, CA: IEEE Computer Society.

2. Antoniol, G., Ayari, K., Di Penta, M., Khomh, F., & Guéhéneuc, Y.-G. (2008). Is it a bug or an enhancement? A text-based approach to classify change requests. In Proceedings of the 2008 Conference of the Centre for Advanced Studies on Collaborative Research CASCON 2008 (pp. 304-318). New York, NY: ACM.

3. A systematic and comprehensive investigation of methods to build and evaluate fault prediction models

4. Bachmann, A., Bird, C., Rahman, F., Devanbu, P., & Bernstein, A. (2010). The missing links: bugs and bug-fix commits. In Proceedings of the 18th ACM SIGSOFT International Symposium on Foundations of Software Engineering FSE-18 (pp. 97-106). New York, NY: ACM.

5. A validation of object-oriented design metrics as quality indicators

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1. Defect Prediction in Software Using Predictive Models Based on Historical Data;Advances in Intelligent Systems and Computing;2019

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