作者
Abdullateef O Balogun, Fatimah B Lafenwa-Balogun, Hammed A Mojeed, Victor E Adeyemo, Oluwatobi N Akande, Abimbola G Akintola, Amos O Bajeh, Fatimah E Usman-Hamza
发表日期
2020
研讨会论文
Computational Science and Its Applications–ICCSA 2020: 20th International Conference, Cagliari, Italy, July 1–4, 2020, Proceedings, Part VI 20
页码范围
615-631
出版商
Springer International Publishing
简介
Class imbalance is a prevalent problem in machine learning which affects the prediction performance of classification algorithms. Software Defect Prediction (SDP) is no exception to this latent problem. Solutions such as data sampling and ensemble methods have been proposed to address the class imbalance problem in SDP. This study proposes a combination of Synthetic Minority Oversampling Technique (SMOTE) and homogeneous ensemble (Bagging and Boosting) methods for predicting software defects. The proposed approach was implemented using Decision Tree (DT) and Bayesian Network (BN) as base classifiers on defects datasets acquired from NASA software corpus. The experimental results showed that the proposed approach outperformed other experimental methods. High accuracy of 86.8% and area under operating receiver characteristics curve value of 0.93% achieved by the …
引用总数
202020212022202320241109137
学术搜索中的文章
AO Balogun, FB Lafenwa-Balogun, HA Mojeed… - Computational Science and Its Applications–ICCSA …, 2020