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Credibility Based Imbalance Boosting Method for Software Defect Proneness Prediction
| Content Provider | MDPI |
|---|---|
| Author | Tong, Haonan Wang, Shihai Li, Guangling |
| Copyright Year | 2020 |
| Description | Imbalanced data are a major factor for degrading the performance of software defect models. Software defect dataset is imbalanced in nature, i.e., the number of non-defect-prone modules is far more than that of defect-prone ones, which results in the bias of classifiers on the majority class samples. In this paper, we propose a novel credibility-based imbalance boosting (CIB) method in order to address the class-imbalance problem in software defect proneness prediction. The method measures the credibility of synthetic samples based on their distribution by introducing a credit factor to every synthetic sample, and proposes a weight updating scheme to make the base classifiers focus on synthetic samples with high credibility and real samples. Experiments are performed on 11 NASA datasets and nine PROMISE datasets by comparing CIB with MAHAKIL, AdaC2, AdaBoost, SMOTE, RUS, No sampling method in terms of four performance measures, i.e., area under the curve (AUC), $F_{1}$, AGF, and Matthews correlation coefficient (MCC). Wilcoxon sign-ranked test and Cliff’s |
| Starting Page | 8059 |
| e-ISSN | 20763417 |
| DOI | 10.3390/app10228059 |
| Journal | Applied Sciences |
| Issue Number | 22 |
| Volume Number | 10 |
| Language | English |
| Publisher | MDPI |
| Publisher Date | 2020-11-13 |
| Access Restriction | Open |
| Subject Keyword | Applied Sciences Information and Library Science Software Defect Prediction Defect Proneness Class-imbalance Learning Oversampling Ensemble Learning |
| Content Type | Text |
| Resource Type | Article |