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Building an Ensemble for Software Defect Prediction Based on Diversity Selection
2016
Proceedings of the 10th ACM/IEEE International Symposium on Empirical Software Engineering and Measurement - ESEM '16
Ensemble techniques have gained attention in various scientific fields. Defect prediction researchers have investigated many state-of-the-art ensemble models and concluded that in many cases these outperform standard single classifier techniques. Almost all previous work using ensemble techniques in defect prediction rely on the majority voting scheme for combining prediction outputs, and on the implicit diversity among single classifiers. Aim: Investigate whether defect prediction can be
doi:10.1145/2961111.2962610
dblp:conf/esem/PetricBHCB16
fatcat:p53ulcdh4ng4vpljdfyyq4odbu