ACTIDS:用于检测和定位网络攻击的主动策略

E. Menahem, Y. Elovici, N. Amar, Gabi Nakibly
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引用次数: 5

摘要

在这项工作中,我们研究了一种检测旨在降低网络服务质量(QoS)的攻击的新方法。为此,提出了一种新的基于网络的入侵检测系统。大多数现代nids采用被动方法,仅监控网络的生产流量。本文探讨了分布式代理主动发送周期性探测的补充方法。这些探针被持续监控以检测网络的异常行为。所提出的方法消除了网络生产流量的许多可变性,这些可变性使其难以分类。这使得NIDS能够检测到更微妙的攻击,而这些攻击仅使用被动方法无法检测到。此外,主动探测方法允许仅使用网络正常状态的示例有效地训练NIDS,从而能够有效地检测零日攻击。通过实际实验,我们表明,与仅依赖于被动方法的NIDS相比,利用主动方法的NIDS在检测旨在降低网络QoS的攻击方面要有效得多。
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ACTIDS: an active strategy for detecting and localizing network attacks
In this work we investigate a new approach for detecting attacks which aim to degrade the network's Quality of Service (QoS). To this end, a new network-based intrusion detection system (NIDS) is proposed. Most contemporary NIDSs take a passive approach by solely monitoring the network's production traffic. This paper explores a complementary approach in which distributed agents actively send out periodic probes. The probes are continuously monitored to detect anomalous behavior of the network. The proposed approach takes away much of the variability of the network's production traffic that makes it so difficult to classify. This enables the NIDS to detect more subtle attacks which would not be detected using the passive approach alone. Furthermore, the active probing approach allows the NIDS to be effectively trained using only examples of the network's normal states, hence enabling an effective detection of zero day attacks. Using realistic experiments, we show that an NIDS which also leverages the active approach is considerably more effective in detecting attacks which aim to degrade the network's QoS when compared to an NIDS which relies solely on the passive approach.
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