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Adaptive Centre-Weighted Oversampling for Class Imbalance in Software Defect Prediction

机译:软件缺陷预测中的类别不平衡的自适应中心加权过采样

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In the field of software engineering, software defect prediction can maintain the high quality of software products, which is a popular current research topic. However, class imbalance affects the overall classification accuracy of software defect prediction models which is the key issue to be resolved. A new method called adaptive centre-weighted oversampling (ACWO) is proposed to effectively address imbalanced learning problems. First, an appropriate neighborhood size and neighbors are determined for each minority class sample. Then, for a minority class sample, the adaptive centre that is within its neighborhood range, its neighbors and the minority class sample are used to generate synthetic samples. Finally, oversampling of each minority class sample is carried out based on the weights assigned to them. These weights are obtained according to the neighborhood sizes and Euclidean distances to the centre. Afterwards, the software defect prediction model is eventually established by ACWO algorithm with stacked denoising auto-encoder neural network. Experimental results show that the software defect prediction model based on ACWO algorithm has a better performance than based on many existing class imbalance learning algorithms according to the precision P, recall R, F1 measure, G-mean, and AUC values.
机译:在软件工程领域,软件缺陷预测可以维持高质量的软件产品,这是一个流行的当前研究主题。但是,类不平衡会影响软件缺陷预测模型的整体分类准确性,这是要解决的关键问题。提出了一种称为自适应中心加权过采样(ACWO)的新方法,以有效地解决了不平衡的学习问题。首先,针对每个少数类样本确定适当的邻域大小和邻居。然后,对于少数群体类样本,用于在其邻域范围内,其邻居和少数群体样本中的自适应中心用于产生合成样本。最后,根据分配给他们的权重进行每个少数群体样本的过采样。根据邻域尺寸和欧几里德距离到中心的邻近距离获得这些重量。然后,通过具有堆叠的去噪自动编码器神经网络的ACWO算法最终建立软件缺陷预测模型。实验结果表明,基于ACWO算法的软件缺陷预测模型比基于许多根据精密P,Recall R,F1测量,G-均值和AUC值的许多现有类别不平衡学习算法具有更好的性能。

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