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An ensemble-based evolutionary framework for coping with distributed intrusion detection

机译:基于集合的进化框架,用于应对分布式入侵检测

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摘要

A distributed data mining algorithm to improve the detection accuracy when classifying malicious or unauthorized network activity is presented. The algorithm is based on genetic programming (GP) extended with the ensemble paradigm. GP ensemble is particularly suitable for distributed intrusion detection because it allows to build a network profile by combining different classifiers that together provide complementary information. The main novelty of the algorithm is that data is distributed across multiple autonomous sites and the learner component acquires useful knowledge from this data in a cooperative way. The network profile is then used to predict abnormal behavior. Experiments on the KDD Cup 1999 Data show the capability of genetic programming in successfully dealing with the problem of intrusion detection on distributed data.
机译:提出了一种分布式数据挖掘算法,用于在对恶意或未经授权的网络活动进行分类时提高检测准确性。该算法基于以集成范式扩展的遗传编程(GP)。 GP集成特别适合于分布式入侵检测,因为它允许通过组合在一起提供补充信息的不同分类器来构建网络配置文件。该算法的主要新颖之处在于,数据分布在多个自治站点上,学习者组件以协作方式从该数据中获取有用的知识。然后将网络配置文件用于预测异常行为。在KDD Cup 1999数据上进行的实验表明,遗传编程能够成功解决分布式数据的入侵检测问题。

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