An efficient dual ensemble software defect prediction method with neural network

Jinfu Chen, Jiaping Xu, Saihua Cai, Xiaoli Wang, Yuechao Gu, Shuhui Wang
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引用次数: 1

Abstract

With the rapid development of technology, software projects are becoming increasingly complex, but the problem of defects is still not well solved, and the application of defective software will bring some security problems, therefore, it is necessary to identify the defective modules to ensure the quality of software. Software defect prediction (SDP) can achieve this goal and it is now an essential part of software testing. However, there is a problem of class imbalance in the defective datasets, which can easily cause the prediction models inaccuracy. Ensemble learning has been proven to be one of the best ways to address the problem of class imbalance. In this paper, we propose an efficient dual ensemble software defect prediction method with neural network (DE-SDP) to solve the class imbalance problem, thereby improving the performance of prediction model. Firstly, we combine cross-validation and seven different classifiers to build base ensemble classifiers. Then, we use stacking method and neural network model to re-ensemble the base ensemble classifiers. Finally, we evaluate the performance of proposed DE-SDP on eight public datasets, and the results demonstrate the effectiveness of the DE-SDP method.
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基于神经网络的双集成软件缺陷预测方法
随着技术的飞速发展,软件项目越来越复杂,但缺陷的问题仍然没有很好地解决,并且缺陷软件的应用会带来一些安全问题,因此,有必要识别缺陷模块,以确保软件的质量。软件缺陷预测(SDP)可以实现这一目标,它现在是软件测试的重要组成部分。然而,在有缺陷的数据集中存在类不平衡的问题,这很容易导致预测模型的不准确。集成学习已被证明是解决班级失衡问题的最佳方法之一。本文提出了一种有效的基于神经网络(DE-SDP)的双集成软件缺陷预测方法来解决类不平衡问题,从而提高了预测模型的性能。首先,我们结合交叉验证和7种不同的分类器构建基本集成分类器。然后,利用叠加法和神经网络模型对基本集成分类器进行重新集成。最后,我们在8个公共数据集上评估了所提出的DE-SDP方法的性能,结果证明了DE-SDP方法的有效性。
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