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首页> 外文期刊>IEICE Transactions on Information and Systems >Efficient Masquerade Detection Using SVM Based on Common Command Frequency in Sliding Windows
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Efficient Masquerade Detection Using SVM Based on Common Command Frequency in Sliding Windows

机译:基于通用命令频率的SVM滑动窗口高效伪装检测

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摘要

Masqueraders who impersonate other users pose serious threat to computer security. Unfortunately, firewalls or misuse-based intrusion detection systems are generally ineffective in detecting masqueraders. Anomaly detection techniques have been proposed as a complementary approach to overcome such limitations. However, they are not accurate enough in detection, and the rate of false alarm is too high for the technique to be applied in practice. For example, recent empirical studies on masquerade detection using UNIX commands found the accuracy to be below 70%. In this research, we performed a comparative study to investigate the effectiveness of SVM (Support Vector Machine) technique using the same data set and configuration reported in the previous experiments. In order to improve accuracy of masquerade detection, we used command frequencies in sliding windows as feature sets. In addition, we chose to ignore commands commonly used by all the users and introduce the concept of voting engine. Though still imperfect, we were able to improve the accuracy of masquerade detection to 80.1% and 94.8%, whereas previous studies reported accuracy of 69.3% and 62.8% in the same configurations. This study convincingly demonstrates that SVM is useful as an anomaly detection technique and that there are several advantages SVM offers as a tool to detect masqueraders.
机译:冒充其他用户的冒充者会严重威胁计算机安全。不幸的是,防火墙或基于滥用的入侵检测系统通常在检测伪装者方面无效。已经提出了异常检测技术作为克服这种限制的补充方法。但是,它们在检测上不够准确,并且误报率对于在实践中应用该技术而言太高。例如,最近对使用UNIX命令检测假面的实证研究发现准确度低于70%。在这项研究中,我们进行了一项比较研究,以使用先前实验中报告的相同数据集和配置研究SVM(支持向量机)技术的有效性。为了提高伪装检测的准确性,我们使用滑动窗口中的命令频率作为特征集。另外,我们选择忽略所有用户常用的命令,并介绍投票引擎的概念。尽管仍然不完善,我们仍能够将假面舞会的检测准确性提高到80.1%和94.8%,而先前的研究报道,在相同配置中,伪装检测的准确性为69.3%和62.8%。这项研究令人信服地证明了SVM作为异常检测技术很有用,并且SVM作为检测伪装者的工具具有许多优势。

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