首页> 外文会议>IEEE International Conference on Intelligence and Security Informatics(ISI 2005); 20050519-20; Atlanta,GA(US) >Learning Classifiers for Misuse Detection Using a Bag of System Calls Representation
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Learning Classifiers for Misuse Detection Using a Bag of System Calls Representation

机译:使用一包系统调用表示来学习分类器以进行滥用检测

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In this paper, we propose a "bag of system calls" representation for intrusion detection of system call sequences and describe misuse detection results with widely used machine learning techniques on University of New Mexico (UNM) and MIT Lincoln Lab (MIT LL) system call sequences with the proposed representation. With the feature representation as input, we compare the performance of several machine learning techniques and show experimental results. The results show that the machine learning techniques on simple "bag of system calls" representation of system call sequences is effective and often perform better than those approaches that use foreign contiguous subsequences for detecting intrusive behaviors of compromised processes.
机译:在本文中,我们提出了用于系统调用序列的入侵检测的“系统调用包”表示,并利用新墨西哥大学(UNM)和麻省理工学院林肯实验室(MIT LL)系统调用上广泛使用的机器学习技术描述滥用检测结果具有建议表示形式的序列。以特征表示为输入,我们比较了几种机器学习技术的性能并显示了实验结果。结果表明,与简单的“系统调用包”表示的系统调用序列相比,机器学习技术是有效的,并且通常比那些使用外部连续子序列来检测入侵进程的入侵行为的方法更好。

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