Visualization-Based Software Defect Prediction via Convolutional Neural Network with Global Self-Attention

Shaojian Qiu, Shaosheng Wang, Xuhong Tian, Mengyang Huang, Qiong Huang
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Abstract

Defect prediction technology helps software quality assurance teams understand the distribution of software defects, which can assist them to allocate testing and verification resources appropriately. Current visualization-based software defect prediction methods lack spatial and global information of code images during the feature extraction process. To solve the problem of incomplete information, this paper proposes a Convolutional Neural Network with Global Self-Attention (CNN-GSA). The method converts codes into corresponding images and uses an improved convolutional neural network, which combines channel attention, spatial attention, and self-attention mechanisms in a global attention layer, to extract defect-related structural and semantic features in code images. Empirical study shows that the model built with the features generated by CNN-GSA can achieve better F-measure results in defect prediction tasks.
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基于全局自关注卷积神经网络的可视化软件缺陷预测
缺陷预测技术帮助软件质量保证团队了解软件缺陷的分布,这可以帮助他们适当地分配测试和验证资源。目前基于可视化的软件缺陷预测方法在特征提取过程中缺乏代码图像的空间信息和全局信息。为了解决信息不完全问题,本文提出了一种具有全局自关注的卷积神经网络(CNN-GSA)。该方法将代码转换为相应的图像,并使用改进的卷积神经网络,在全局注意层中结合通道注意、空间注意和自注意机制,提取代码图像中与缺陷相关的结构和语义特征。实证研究表明,利用CNN-GSA生成的特征构建的模型在缺陷预测任务中可以获得较好的F-measure结果。
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