DCA for bot detection

Yousof Al-Hammadi, U. Aickelin, Julie Greensmith
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引用次数: 68

Abstract

Ensuring the security of computers is a non-trivial task, with many techniques used by malicious users to compromise these systems. In recent years a new threat has emerged in the form of networks of hijacked zombie machines used to perform complex distributed attacks such as denial of service and to obtain sensitive data such as password information. These zombie machines are said to be infected with a dasiahotpsila - a malicious piece of software which is installed on a host machine and is controlled by a remote attacker, termed the dasiabotmaster of a botnetpsila. In this work, we use the biologically inspired dendritic cell algorithm (DCA) to detect the existence of a single hot on a compromised host machine. The DCA is an immune-inspired algorithm based on an abstract model of the behaviour of the dendritic cells of the human body. The basis of anomaly detection performed by the DCA is facilitated using the correlation of behavioural attributes such as keylogging and packet flooding behaviour. The results of the application of the DCA to the detection of a single hot show that the algorithm is a successful technique for the detection of such malicious software without responding to normally running programs.
DCA用于机器人检测
确保计算机的安全是一项非常重要的任务,恶意用户使用了许多技术来破坏这些系统。近年来,一种新的威胁以被劫持的僵尸机器网络的形式出现,这些僵尸机器被用来执行复杂的分布式攻击,如拒绝服务攻击和获取敏感数据,如密码信息。据说这些僵尸机器感染了dasiahotpsila,这是一种安装在主机上的恶意软件,由远程攻击者控制,称为僵尸机器的dasiabotmaster。在这项工作中,我们使用受生物学启发的树突状细胞算法(DCA)来检测受损主机上单个热点的存在。DCA是一种基于人体树突状细胞行为的抽象模型的免疫启发算法。DCA执行的异常检测的基础是使用行为属性的相关性,如键盘记录和数据包泛滥行为。将DCA算法应用于单个热点的检测结果表明,该算法是一种成功的检测此类不响应正常运行程序的恶意软件的技术。
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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