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A multi-objective evolutionary fuzzy system to obtain a broad and accurate set of solutions in intrusion detection systems

机译:一种多目标进化模糊系统,可在入侵检测系统中获得广泛准确的溶液集

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Intrusion detection systems are devoted to monitor a network with aims at finding and avoiding anomalous events. In particular, we focus on misuse detection systems, which are trained to identify several known types of attacks. These can be unauthorized accesses, or denial of service attacks, among others. Whenever it scans a trace of a suspicious event, it is programmed to trigger an alert and/or to block this dangerous access to the system. Depending on the security policies of the network, the administrator may seek different requirements that will have a strong dependency on the behavior of the intrusion detection system. For a given application, the cost of raising false alarms could be higher than carrying out a preventive access lock. In other scenarios, there could be a necessity of correctly identifying the exact type of cyber attack to proceed in a given way. In this paper, we propose a multi-objective evolutionary fuzzy system for the development of a system that can be trained using different metrics. By increasing the search space during the optimization of the model, more accurate solutions are expected to be obtained. Additionally, this scheme allows the final user to decide, among a broad set of solutions, which one is better suited for the current network characteristics. Our experimental results, using the well-known KDDCup'99 problem, supports the quality of this novel approach in contrast to the state-of-the-art for evolutionary fuzzy systems in intrusion detection, as well as the C4.5 decision tree.
机译:入侵检测系统被致力于监控网络的目标,目的地寻找和避免异常事件。特别是,我们专注于滥用检测系统,这些检测系统被训练,以识别若干已知类型的攻击。这些可以是未经授权的访问,或拒绝服务攻击等。每当它扫描一段可疑事件时,它被编程为触发警报和/或阻止对系统的危险访问。根据网络的安全策略,管理员可能会寻求不同的要求,这些要求将具有强烈依赖入侵检测系统的行为。对于给定的应用,提高误报的成本可能高于执行预防性访问锁定。在其他场景中,可能需要正确识别以特定方式进行的网络攻击的确切类型。在本文中,我们提出了一种用于开发可以使用不同度量培训的系统的多目标进化模糊系统。通过增加在型号的优化期间的搜索空间,预计将获得更准确的解决方案。另外,该方案允许最终用户在广泛的解决方案中决定哪一个更适合当前网络特性。我们的实验结果,利用着名的KDDCUP'99问题,支持这种新方法的质量与入侵检测中的进化模糊系统以及C4.5决策树的现有技术相反。

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