Sparse events, such as malign attacks in real-time network traffic, have caused big organisations an immense hike in revenue loss. This is due to the excessive growth of the network and its exposure to a plethora of people. The standard methods used to detect intrusions are not promising and have significant failure to identify new malware. Moreover, the challenges in handling high volume data with sparsity, high false positives, fewer detection rates in minor class, training time and feature engineering of the dimensionality of data has promoted deep learning to take over the task with less time and great results. The existing system needs improvement in solving real-time network traffic issues along with feature engineering. Our proposed work overcomes these challenges by giving promising results using deep-stacked autoencoders in two stages. The two-stage deep learning combines with shallow learning using the random forest for classification in the second stage. This made the model get well with the latest Canadian Institute for Cybersecurity - Intrusion Detection System 2017 (CICIDS-2017) dataset. Zero false positives with admirable detection accuracy were achieved.
翻译:诸如实时网络交通中的恶意袭击等突发事件导致大型组织的收入损失大幅上升。 这是因为网络过度增长,并且暴露于众多的人。 用于探测入侵的标准方法并不令人乐观,而且严重无法识别新的恶意软件。 此外,在处理大量数据时遇到的难题,如偏狭、高假阳性、低年级检测率、培训时间和数据维度的特征工程等,促使人们深思熟虑,以较少的时间和巨大成果接管任务。 现有系统在解决实时网络交通问题以及地貌工程方面需要改进。 我们建议的工作克服了这些挑战,在两个阶段使用深层自动编码器提供有希望的结果。 两阶段的深层次学习与利用随机森林进行分类的浅薄学习相结合。 这使得模型与最新的加拿大网络安全研究所2017入侵探测系统(CICIS-2017) 的模型变得很好。 零度假阳性,检测准确性令人钦佩。