Poster: Identification of Methods with Low Fault Risk
May 03, 2018 Β· Declared Dead Β· π 2018 IEEE/ACM 40th International Conference on Software Engineering: Companion (ICSE-Companion)
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Authors
Rainer Niedermayr, Tobias RΓΆhm, Stefan Wagner
arXiv ID
1805.01132
Category
cs.SE: Software Engineering
Citations
0
Venue
2018 IEEE/ACM 40th International Conference on Software Engineering: Companion (ICSE-Companion)
Last Checked
4 months ago
Abstract
Test resources are usually limited and therefore it is often not possible to completely test an application before a release. Therefore, testers need to focus their activities on the relevant code regions. In this paper, we introduce an inverse defect prediction approach to identify methods that contain hardly any faults. We applied our approach to six Java open-source projects and show that on average 31.6% of the methods of a project have a low fault risk; they contain in total, on average, only 5.8% of all faults. Furthermore, the results suggest that, unlike defect prediction, our approach can also be applied in cross-project prediction scenarios. Therefore, inverse defect prediction can help prioritize untested code areas and guide testers to increase the fault detection probability.
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