首页> 外文会议>Asian Computing Science Conference(ASIAN 2007); 20071209-11; Doha(QA) >Masquerade Detection Based Upon GUI User Profiling in Linux Systems
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Masquerade Detection Based Upon GUI User Profiling in Linux Systems

机译:Linux系统中基于GUI用户配置文件的伪装检测

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Masquerading or impersonation attack refers to the act of gaining access to confidential data or greater access privileges, while pretending to be legitimate users. Detection of masquerade attacks is of great importance and is a non-trivial task of system security. Detection of these attacks is done by monitoring significant changes in user's behavior based on his/her computer usage. Traditional detection mechanisms are based on command line system events collected using log files. In a GUI based system, most of the user activities are performed using either mouse movements and clicks or a combination of mouse movements and keystrokes. The command line data cannot capture the complete GUI event behavior of the users hence it is insufficient to detect attacks in GUI based systems. Presently, there is no frame work available to capture the GUI based user behavior in Linux systems. We are proposing a novel approach to capture the GUI based user behavior for Linux systems using our event logging tool. Our experimentation results shows that, the GUI based user behavior can be efficiently used for masquerade attack detection to achieve high detection rates with less false positives. We have applied One-class SVM on the collected data, which requires only training the user's own legitimate sessions to build up the user's profile. Our results on GUI data using One-class SVM gives higher detection rates with less false positives compared to a Two-class SVM approach.
机译:伪装或假冒攻击是指在假装为合法用户的同时获得对机密数据的访问或更大的访问权限的行为。伪装攻击的检测非常重要,并且是系统安全的重要任务。通过根据用户的计算机使用情况监视用户行为的重大变化来检测这些攻击。传统的检测机制基于使用日志文件收集的命令行系统事件。在基于GUI的系统中,大多数用户活动是使用鼠标移动和单击或鼠标移动和击键的组合来执行的。命令行数据无法捕获用户的完整GUI事件行为,因此不足以检测基于GUI的系统中的攻击。当前,在Linux系统中没有可用的框架来捕获基于GUI的用户行为。我们正在提出一种新颖的方法来使用事件记录工具捕获Linux系统基于GUI的用户行为。我们的实验结果表明,基于GUI的用户行为可以有效地用于伪装攻击检测,从而以较低的误报率实现较高的检测率。我们对收集到的数据应用了一类SVM,仅需训练用户自己的合法会话即可建立用户的个人资料。与两类SVM方法相比,我们使用一类SVM在GUI数据上的结果提供了更高的检测率和更少的误报率。

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