Insider Threat Detection using Deep Autoencoder and Variational Autoencoder Neural Networks

Efthimios Pantelidis, G. Bendiab, S. Shiaeles, N. Kolokotronis
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引用次数: 2

Abstract

Internal attacks are one of the biggest cybersecurity issues to companies and businesses. Despite the implemented perimeter security systems, the risk of adversely affecting the security and privacy of the organization’s information remains very high. Actually, the detection of such a threat is known to be a very complicated problem, presenting many challenges to the research community. In this paper, we investigate the effectiveness and usefulness of using Autoencoder and Variational Autoencoder deep learning algorithms to automatically defend against insider threats, without human intervention. The performance evaluation of the proposed models is done on the public CERT dataset (CERT r4.2) that contains both benign and malicious activities generated from 1000 simulated users. The comparison results with other models show that the Variational Autoencoder neural network provides the best overall performance with a higher detection accuracy and a reasonable false positive rate.
利用深度自编码器和变分自编码器神经网络进行内部威胁检测
内部攻击是公司和企业面临的最大网络安全问题之一。尽管实施了外围安全系统,但对组织信息的安全性和隐私产生不利影响的风险仍然很高。事实上,这种威胁的检测是一个非常复杂的问题,给研究界带来了许多挑战。在本文中,我们研究了使用Autoencoder和Variational Autoencoder深度学习算法在没有人为干预的情况下自动防御内部威胁的有效性和实用性。提出的模型的性能评估是在公共CERT数据集(CERT r4.2)上完成的,该数据集包含从1000个模拟用户生成的良性和恶意活动。与其他模型的比较结果表明,变分自编码器神经网络具有较好的综合性能,具有较高的检测精度和合理的误报率。
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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