用于软件故障预测的人工神经网络预训练

Moein Owhadi-Kareshk, Yasser Sedaghat, M. Akbarzadeh-T.
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引用次数: 11

摘要

软件故障预测是软件测试过程中的重要环节之一。在这个阶段,根据已经测试过的软件系统的文档化信息来预测故障发生的概率。利用这些先验知识,开发人员和测试团队可以更好地管理测试过程。在机器学习领域有很多努力来解决这个分类问题。我们建议使用一种预训练技术,用于一个浅层,即具有较少隐藏层的人工神经网络(ANN)。虽然这种方法通常用于防止深度人工神经网络的过拟合,但我们的结果表明,即使在浅层网络中,它也可以通过逃避局部最小值来提高精度。我们将提出的方法与四种基于svm的分类器和一种未经预训练的常规人工神经网络在PROMISE存储库中来自NASA代码的七个数据集上进行了比较。结果证实,预训练提高了准确率,达到了1.43的最佳综合排名。在7个数据集中,我们的方法在4个数据集上具有较高的准确率,而ANN和支持向量机分别在2个和1个数据集上具有最好的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pre-training of an artificial neural network for software fault prediction
Software fault prediction is one of the significant stages in the software testing process. At this stage, the probability of fault occurrence is predicted based on the documented information of the software systems that are already tested. Using this prior knowledge, developers and testing teams can better manage the testing process. There are many efforts in the field of machine learning to solve this classification problem. We propose to use a pre-training technique for a shallow, i.e. with fewer hidden layers, Artificial Neural Network (ANN). While this method is usually employed to prevent over-fitting in deep ANNs, our results indicate that even in a shallow network, it improves the accuracy by escaping from local minima. We compare the proposed method with four SVM-based classifiers and a regular ANN without pre-training on seven datasets from NASA codes in the PROMISE repository. Results confirm that the pre-training improves accuracy by achieving the best overall ranking of 1.43. Among seven datasets, our method has higher accuracy in four of them, while ANN and support vector machine are the best for two and one datasets, respectively.
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