Cross-project defect prediction using a connectivity-based unsupervised classifier 论文
2016引用 249
Software Engineering ResearchManufacturing Process and OptimizationSoftware Reliability and Analysis Research
摘要
Defect prediction on projects with limited historical data has attracted great interest from both researchers and practitioners. Cross-project defect prediction has been the main area of progress by reusing classifiers from other projects. However, existing approaches require some degree of homogeneity (e.g., a similar distribution of metric values) between the training projects and the target project. Satisfying the homogeneity requirement often requires significant effort (currently a very active area of research).