Cross-project defect prediction: a large scale experiment on data vs. domain vs. process
Microsoft (United States) · University of Zurich
Abstract
Prediction of software defects works well within projects as long as there is a sufficient amount of data available to train any models. However, this is rarely the case for new software projects and for many companies. So far, only a few have studies focused on transferring prediction models from one project to another. In this paper, we study cross-project defect prediction models on a large scale. For 12 real-world applications, we ran 622 cross-project predictions. Our results indicate that cross-project prediction is a serious challenge, i.e., simply using models from projects in the same domain or with the same process does not lead to accurate predictions. To help software engineers choose models…
Citation impact
- FWCI
- 51.23
- Percentile
- 100%
- References
- 34
Authors
5Topics & keywords
- Computer science
- Predictive modelling
- Software
- Process (computing)
- Cross-validation
- Project management
- Domain (mathematical analysis)
- Data mining