Explainable Software Defects Classification Using SMOTE and Machine Learning

Agboeze Jude, Jia Uddin
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Abstract

Software defect prediction is a critical task in software engineering that aims to identify and mitigate potential defects in software systems. In recent years, numerous techniques and approaches have been developed to improve the accuracy and efficiency of the defect prediction model. In this research paper, we proposed a comprehensive approach that addresses class imbalance by utilizing stratified splitting, explainable AI techniques, and a hybrid machine learning algorithm. To mitigate the impact of class imbalance, we employed stratified splitting during the training and evaluation phases. This method ensures that the class distribution is maintained in both the training and testing sets, enabling the model to learn from and generalize to the minority class examples effectively. Furthermore, we leveraged explainable AI methods, Lime and Shap, to enhance interpretability in the machine learning models. To improve prediction accuracy, we propose a hybrid machine learning algorithm that combines the strength of multiple models. This hybridization allows us to exploit the strength of each model, resulting in improved overall performance. The experiment is evaluated using the NASA-MD datasets. The result revealed that handling the class imbalanced data using stratify splitting approach achieves a better overall performance than the SMOTE approach in Software Defect Detection (SDD).
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利用 SMOTE 和机器学习进行可解释的软件缺陷分类
软件缺陷预测是软件工程中的一项重要任务,旨在识别和减少软件系统中的潜在缺陷。近年来,人们开发了许多技术和方法来提高缺陷预测模型的准确性和效率。在本研究论文中,我们提出了一种综合方法,通过利用分层拆分、可解释人工智能技术和混合机器学习算法来解决类不平衡问题。为了减轻类不平衡的影响,我们在训练和评估阶段采用了分层拆分法。这种方法可确保训练集和测试集中的类别分布得以保持,从而使模型能够有效地从少数类别示例中学习并泛化。此外,我们还利用可解释的人工智能方法 Lime 和 Shap 来增强机器学习模型的可解释性。为了提高预测准确性,我们提出了一种混合机器学习算法,该算法结合了多种模型的优势。这种混合算法使我们能够利用每个模型的优势,从而提高整体性能。实验使用 NASA-MD 数据集进行评估。结果显示,在软件缺陷检测(SDD)中,使用分层分割方法处理类不平衡数据比使用 SMOTE 方法取得了更好的整体性能。
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来源期刊
Annals of Emerging Technologies in Computing
Annals of Emerging Technologies in Computing Computer Science-Computer Science (all)
CiteScore
3.50
自引率
0.00%
发文量
26
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