基于SMOTE的神经网络软件缺陷预测

Rizal Broer Bahaweres, Fajar Agustian, I. Hermadi, A. Suroso, Y. Arkeman
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引用次数: 12

摘要

软件缺陷预测是一种实用的方法,通过关注缺陷模块来提高软件测试的质量和效率以及时间和成本。软件缺陷预测数据集自然存在类不平衡问题,缺陷模块与非缺陷模块相比少得多。这种情况对神经网络有负面影响,可能导致过拟合和精度差。合成少数派过采样技术(SMOTE)是解决类不平衡问题的常用技术之一。然而,神经网络和SMOTE都有超参数,这些参数必须在建模过程之前由用户确定。在本研究中,我们应用基于神经网络的SMOTE,即神经网络和SMOTE的组合,SMOTE和神经网络的每个超参数都使用随机搜索进行优化,以解决6个NASA数据集的类不平衡问题。使用5*5交叉验证的结果表明,与原始神经网络相比,Bal提高了25.48%,Recall提高了45.99%。我们还比较了基于神经网络的SMOTE与“传统的”基于机器学习的SMOTE的性能。基于神经网络的SMOTE在平均排名中名列第一。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Software Defect Prediction Using Neural Network Based SMOTE
Software defect prediction is a practical approach to improve the quality and efficiency of time and costs for software testing by focusing on defect modules. The dataset of software defect prediction naturally has a class imbalance problem with very few defective modules compared to non-defective modules. This situation has a negative impact on the Neural Network, which can lead to overfitting and poor accuracy. Synthetic Minority Over-sampling Technique (SMOTE) is one of the popular techniques that can solve the problem of class imbalance. However, Neural Network and SMOTE both have hyperparameters which must be determined by the user before the modelling process. In this study, we applied the Neural Networks Based SMOTE, a combination of Neural Network and SMOTE with each hyperparameter of SMOTE and Neural Network that are optimized using random search to solve the class imbalance problem in the six NASA datasets. The results use a 5*5 cross-validation show that increases Bal by 25.48% and Recall by 45.99% compared to the original Neural Network. We also compare the performance of Neural Network-based SMOTE with “Traditional” Machine Learning-based SMOTE. The Neural Network-based SMOTE takes first place in the average rank.
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