首页> 外文会议>Information Technology: Coding and Computing, 2005. ITCC 2005. International Conference on >Intrusion detection system to detect variant attacks using learning algorithms with automatic generation of training data
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Intrusion detection system to detect variant attacks using learning algorithms with automatic generation of training data

机译:入侵检测系统使用学习算法自动生成训练数据来检测变体攻击

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Although there are many anomaly detection systems based on learning algorithms that are able to detect unknown attacks or variants of known attacks, most systems require sophisticated training data for supervised learning. Because it is difficult to prepare the training data, anomaly detection systems are not widely used in the practical environment. In this paper, we propose an anomaly detection system based on machine learning that requires no prepared training data. The system generates sophisticated training data that is applicable to the learning by processing alerts that a signature based intrusion detection system (IDS) outputs. We evaluated the system using two types of traffic: the 1999 DARPA IDS evaluation data and the security scanner data. The results show that the training data generated by the system is suitable for learning attack behaviors and the system is able to detect variants of worms and known attacks.
机译:尽管有许多基于学习算法的异常检测系统能够检测未知攻击或已知攻击的变体,但是大多数系统都需要复杂的训练数据来进行监督学习。由于难以准备训练数据,因此异常检测系统在实际环境中并未得到广泛使用。在本文中,我们提出了一种基于机器学习的异常检测系统,该系统不需要准备的训练数据。该系统通过处理基于签名的入侵检测系统(IDS)输出的警报来生成适用于学习的复杂训练数据。我们使用两种流量对系统进行了评估:1999 DARPA IDS评估数据和安全扫描器数据。结果表明,该系统生成的训练数据适合于学习攻击行为,并且该系统能够检测蠕虫的变种和已知攻击。

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