The rapid growth of connected devices has led to the proliferation of novel cyber-security threats known as zero-day attacks. Traditional behaviour-based IDS rely on DNN to detect these attacks. The quality of the dataset used to train the DNN plays a critical role in the detection performance, with underrepresented samples causing poor performances. In this paper, we develop and evaluate the performance of DBN on detecting cyber-attacks within a network of connected devices. The CICIDS2017 dataset was used to train and evaluate the performance of our proposed DBN approach. Several class balancing techniques were applied and evaluated. Lastly, we compare our approach against a conventional MLP model and the existing state-of-the-art. Our proposed DBN approach shows competitive and promising results, with significant performance improvement on the detection of attacks underrepresented in the training dataset.
翻译:由于连接装置的迅速增长,出现了被称为零天攻击的新颖的网络安全威胁,传统的基于行为的ISDS依靠DNN来检测这些攻击。用于培训DNN的数据集的质量在检测性能方面起着关键作用,其代表性不足的样本造成不良的性能。在本文件中,我们开发和评价DBN在发现连接装置网络内的网络攻击方面的性能。CICIDS2017数据集被用来培训和评估我们提议的DBN方法的性能。应用和评估了几种等级平衡技术。最后,我们将我们的方法与传统的MLP模型和现有的最新技术进行比较。我们提议的DBN方法显示了竞争性和有希望的结果,在检测培训数据集中攻击代表性不足的性能方面有了显著改善。