Software defect prediction using ensemble learning on selected features

作者: Issam H. Laradji , Mohammad Alshayeb , Lahouari Ghouti

DOI: 10.1016/J.INFSOF.2014.07.005

关键词: Machine learningSoftwareArtificial intelligenceEnsemble learningData miningComputer scienceSupport vector machineRandom forestFeature selectionSoftware qualityRobustness (computer science)Software bug

摘要: … feature selection and ensemble learning on the performance of defect classification. Along with efficient feature selection, a new two-variant (with and without feature selection) …

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