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Knowledge Discovery in Cyber Attacks Data

机译:网络攻击数据中的知识发现

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One of the major challenges in managing security in broadband and high-speed networks is the detection of suspicious anomalies in network traffic. In recent years a lot of effort is focused on developing automatic detection of cyber-attacks using data mining techniques on the data generated from network traffic. In this paper a methodology for automatic detection of cyber-attacks is proposed. To improve the performance, the network traffic data is first preprocessed by filtering and combining features from the original data. The new augmented and refined data is then used to build a classification model that can discriminate between normal network traffic and cyber-attacks. Experimental scenarios are set up to evaluate the effect of preprocessing on the final performance, and additionally to provide insight on possible recommendations in terms of a most suitable classification algorithm. The obtained results indicate performance improvement with data preprocessing. All used classification algorithms provide very high AUC of over 0.95 which attests that the proposed methodology is highly promising for the development and improvement of current and future cyber-attacks detection systems.
机译:在宽带和高速网络中管理安全性的主要挑战之一是检测网络流量中的可疑异常。近年来,许多工作集中在使用数据挖掘技术对网络流量生成的数据进行网络攻击的自动检测方面。本文提出了一种自动检测网络攻击的方法。为了提高性能,首先对网络流量数据进行预处理,方法是对原始数据中的特征进行过滤和组合。然后,使用新的经过增强和完善的数据来建立分类模型,该模型可以区分正常网络流量和网络攻击。设置实验方案来评估预处理对最终性能的影响,并根据最合适的分类算法提供对可能建议的见解。获得的结果表明,通过数据预处理可以提高性能。所有使用的分类算法都提供超过0.95的非常高的AUC,这证明了所提出的方法对于当前和将来的网络攻击检测系统的开发和改进是非常有前途的。

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