Authors
Shahid Hussain, Jacky Keung, Arif Ali Khan, Kwabena Ebo Bennin
Publication date
2015/9/28
Book
Proceedings of the ASWEC 2015 24th Australasian software engineering conference
Pages
91-95
Description
In object-oriented software development, a plethora of studies have been carried out to present the application of machine learning algorithms for fault prediction. Furthermore, it has been empirically validated that an ensemble method can improve classification performance as compared to a single classifier. But, due to the inherent differences among machine learning and data mining approaches, the classification performance of ensemble methods will be varied. In this study, we investigated and evaluated the performance of different ensemble methods with itself and base-level classifiers, in predicting the faults proneness classes. Subsequently, we used three ensemble methods AdaboostM1, Vote and StackingC with five base-level classifiers namely Naivebayes, Logistic, J48, VotedPerceptron and SMO in Weka tool. In order to evaluate the performance of ensemble methods, we retrieved twelve datasets of …
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Scholar articles
S Hussain, J Keung, AA Khan, KE Bennin - Proceedings of the ASWEC 2015 24th Australasian …, 2015