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Layered Security Architecture for Masquerade Attack Detection

机译:化妆舞会攻击检测分层安全架构

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Masquerade attack refers to an attack that uses a fake identity, to gain unauthorized access to personal computer information through legitimate access identification. Automatic discovery of masqueraders is sometimes undertaken by detecting significant departures from normal user behavior. If a user's normal profile deviates from their original behavior, it could potentially signal an ongoing masquerade attack. In this paper we proposed a new framework to capture data in a comprehensive manner by collecting data in different layers across multiple applications. Our approach generates feature vectors which contain the output gained from analysis across multiple layers such as Window Data, Mouse Data, Keyboard Data, Command Line Data, File Access Data and Authentication Data. We evaluated our approach by several experiments with a significant number of participants. Our experimental results show better detection rates with acceptable false positives which none of the earlier approaches has achieved this level of accuracy so far.
机译:化妆舞会攻击是指使用虚假身份的攻击,通过合法访问识别获得对个人计算机信息的未经授权访问。通过检测来自普通用户行为的大量偏离,有时采取自动发现伪装体。如果用户的正常配置文件偏离其原始行为,则可能会使持续的化妆舞会攻击信号。在本文中,我们提出了一种新的框架,通过在多个应用程序中收集不同层中的数据来以全面的方式捕获数据。我们的方法生成了包含从多层分析中获得的输出的特征向量,例如窗口数据,鼠标数据,键盘数据,命令行数据,文件访问数据和认证数据。我们通过几个与众分子的实验评估了我们的方法。我们的实验结果表明,到目前为止,迄今均未实现更好的误报,否则较早的方法都没有取得这种准确性。

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