论文标题

PASTVM:高度准确的在线快速通量检测系统

PASSVM: A Highly Accurate Online Fast Flux Detection System

论文作者

Al-Duwairi, Basheer, Jarrah, Moath, Shatnawi, Ahmed

论文摘要

对手使用快速通量服务网络(FFSN)来为其恶意服务器获得高弹性技术,同时使它们隐藏在直接访问中。在此技术中,许多被称为磁通代理的僵尸网络机器可作为代理,以中继最终用户和由对手控制的恶意母船服务器之间的流量。已经提出了检测FFSN的各种机制。这种机制取决于收集大量DNS交通轨迹,并且需要大量时间来识别快速通量域。在本文中,我们提出了一个有效的基于AI的在线快速通量检测系统,该系统对快速通量域进行了高度准确且非常快速的检测。所提出的系统称为PARSVM,基于与给定域名的DNS响应消息相关联的功能。该方法还取决于存储在两个本地数据库中的功能,除了从响应DNS消息本身中提取的功能。数据库中的信息来自Censys搜索引擎和IP地理位置服务。使用三种类型的人工神经网络评估PASTVM:多层感知器(MLP),径向基函数网络(RBF)和支持向量机(SVM)。结果表明,带有RBF内核的SVM胜过其他两种方法,精度为99.557%,检测时间小于18 ms。

Fast Flux service networks (FFSNs) are used by adversaries to achieve a high resilient technique for their malicious servers while keeping them hidden from direct access. In this technique, a large number of botnet machines, that are known as flux agents, work as proxies to relay the traffic between end users and a malicious mothership server which is controlled by an adversary. Various mechanisms have been proposed for detecting FFSNs. Such mechanisms depend on collecting a large amount of DNS traffic traces and require a considerable amount of time to identify fast flux domains. In this paper, we propose an efficient AI-based online fast flux detection system that performs highly accurate and extremely fast detection of fast flux domains. The proposed system, called PASSVM, is based on features that are associated with DNS response messages of a given domain name. The approach relies on features that are stored in two local databases, in addition to features that are extracted from the response DNS messages itself. The information in the databases are obtained from Censys search engine and IP Geolocation service. PASSVM is evaluated using three types of artificial neural networks which are: Multilayer Perceptron (MLP), Radial Basis Function Network (RBF), and Support Vector Machines (SVM). Results show that SVM with RBF kernel outperformed the other two methods with an accuracy of 99.557% and a detection time of less than 18 ms.

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