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Classification of cyber attacks based on rough set theory

机译:基于粗糙集理论的网络攻击分类

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摘要

The rapidly rising usage of telecommunication and information networks which inter-connect modern society through computers, smart phones and other electronic devices has led to security threats and cyber-crimes (CC) activities. These cybercrime activities has ultimately resulted in CC attack classification as a serious problem in network security domain while machine learning has been subjected to extensive research area in intrusion classification with emphasis on improving the rate of classifier's accuracy or improving the data mining model performance. This study is another attempt, using rough set theory (RST), a rule based decision making approach to extract rules for intrusion attacks classification. Experiments were performed on publicly available data to explore the performance of four different algorithms e.g. genetic algorithm, covering algorithm, LEM2 and Exhaustive algorithms. It is observed that RST classification based on genetic algorithm for rules generation yields best performance as compared to other mentioned rules generation algorithms. Moreover, by applying the proposed technique on publicly available dataset about intrusion attacks, the results show that the proposed approach can fully predict all intrusion attacks and also provides prior useful information to the security engineers or developers to conduct a mandating action.
机译:通过计算机,智能电话和其他电子设备将现代社会相互联系的电信和信息网络的迅速使用导致了安全威胁和网络犯罪(CC)活动。这些网络犯罪活动最终导致CC攻击分类成为网络安全领域中的一个严重问题,而机器学习已受到入侵分类研究的广泛研究,重点是提高分类器的准确率或改善数据挖掘模型的性能。这项研究是使用粗糙集理论(RST)的另一种尝试,粗糙集理论是一种基于规则的决策方法,用于提取入侵攻击分类的规则。对公开数据进行了实验,以探索四种不同算法的性能,例如遗传算法,覆盖算法,LEM2和穷举算法。可以看出,与其他提到的规则生成算法相比,基于遗传算法的规则生成RST分类产生最佳性能。此外,通过将所提出的技术应用到有关入侵攻击的公开数据集上,结果表明所提出的方法可以完全预测所有入侵攻击,并且还可以向安全工程师或开发人员提供事先有用的信息以执行强制性措施。

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