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Cross-Project Defect Prediction Using a Credibility Theory Based Naive Bayes Classifier

机译:基于朴素理论的Naive Bayes分类器的交叉项目缺陷预测

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Several defect prediction models proposed are effective when historical datasets are available. Defect prediction becomes difficult when no historical data exist. Cross-project defect prediction (CPDP), which uses projects from other sources/companies to predict the defects in the target projects proposed in recent studies has shown promising results. However, the performance of most CPDP approaches are still beyond satisfactory mainly due to distribution mismatch between the source and target projects. In this study, a credibility theory based Na?ve Bayes (CNB) classifier is proposed to establish a novel reweighting mechanism between the source projects and target projects so that the source data could simultaneously adapt to the target data distribution and retain its own pattern. Our experimental results show that the feasibility of the novel algorithm design and demonstrate the significant improvement in terms of the performance metrics considered achieved by CNB over other CPDP approaches.
机译:建议的几个缺陷预测模型在历史数据集可用时是有效的。当没有存在历史数据时,缺陷预测变得困难。跨项目缺陷预测(CPDP),使用其他来源/公司的项目来预测最近研究中提出的目标项目中的缺陷表明了有希望的结果。然而,大多数CPDP方法的性能仍然令人满意,主要是由于来源和目标项目之间的分发不匹配。在这项研究中,提出了一种基于基于Na?VE贝叶斯(CNB)分类器的可信度理论,以在源项目和目标项目之间建立一种新的重重管理机制,使得源数据可以同时适应目标数据分布并保留自己的模式。我们的实验结果表明,新型算法设计的可行性和展示了CNB在其他CPDP方法中所考虑的性能指标的显着改进。

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