Is Predicting Software Security Bugs Using Deep Learning Better Than the Traditional Machine Learning Algorithms?

Caesar Jude Clemente, Fehmi Jaafar, Yasir Malik
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引用次数: 15

Abstract

Software insecurity is being identified as one of the leading causes of security breaches. In this paper, we revisited one of the strategies in solving software insecurity, which is the use of software quality metrics. We utilized a multilayer deep feedforward network in examining whether there is a combination of metrics that can predict the appearance of security-related bugs. We also applied the traditional machine learning algorithms such as decision tree, random forest, naïve bayes, and support vector machines and compared the results with that of the Deep Learning technique. The results have successfully demonstrated that it was possible to develop an effective predictive model to forecast software insecurity based on the software metrics and using Deep Learning. All the models generated have shown an accuracy of more than sixty percent with Deep Learning leading the list. This finding proved that utilizing Deep Learning methods and a combination of software metrics can be tapped to create a better forecasting model thereby aiding software developers in predicting security bugs.
使用深度学习预测软件安全漏洞比传统的机器学习算法更好吗?
软件不安全被认为是导致安全漏洞的主要原因之一。在本文中,我们重新审视了解决软件不安全性的策略之一,即软件质量度量的使用。我们利用多层深度前馈网络来检查是否存在可以预测安全相关漏洞出现的指标组合。我们还应用了传统的机器学习算法,如决策树、随机森林、naïve贝叶斯和支持向量机,并将结果与深度学习技术进行了比较。研究结果成功地证明,基于软件度量和使用深度学习,开发一个有效的预测模型来预测软件的不安全性是可能的。所有生成的模型都显示出超过60%的准确率,其中深度学习名列前茅。这一发现证明,利用深度学习方法和软件指标的组合可以创建一个更好的预测模型,从而帮助软件开发人员预测安全漏洞。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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