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A real-time network intrusion detection system for large-scale attacks based on an incremental mining approach

机译:基于增量挖掘方法的大规模攻击实时网络入侵检测系统

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摘要

None of the previously proposed Network Intrusion Detection Systems (NIDSs), which are subject to fuzzy association rules, can meet real-time requirements because they all apply static mining approaches. This study proposed a real-time NIDS with incremental mining for fuzzy association rules. By consistently comparing the two rule sets, one mined from online packets and the other mined from training attack-free packets, the proposed system can render a decision every 2 seconds. Thus, compared with traditional static mining approaches, the proposed system can greatly improve efficiency from offline detection to real-time online detection. Since the proposed system derives features from packet headers only, like the previous works based on fuzzy association rules, large-scale attack types are focused. Many DoS attacks were experimented in this study. Experiments were performed to demonstrate the excellent effectiveness and efficiency of the proposed system. The system may not cause false alarms because normal programs supposedly would not generate enough mal-formatted packets, or packets that violate normal network protocols.
机译:受模糊关联规则约束的先前提出的网络入侵检测系统(NIDS)都不能满足实时要求,因为它们都采用了静态挖掘方法。这项研究提出了一种具有增量挖掘的实时NIDS,用于模糊关联规则。通过始终如一地比较两个规则集(一个是从在线数据包中提取的,另一个是从训练无攻击数据包中提取的),建议的系统可以每2秒做出一次决策。因此,与传统的静态挖掘方法相比,该系统可以大大提高从离线检测到实时在线检测的效率。由于所提出的系统仅从数据包报头中获取特征,就像先前基于模糊关联规则的工作一样,因此重点关注大规模攻击类型。在这项研究中,实验了许多DoS攻击。进行实验以证明所提出系统的出色有效性和效率。系统可能不会引起误报,因为正常程序可能不会生成足够格式错误的数据包或违反正常网络协议的数据包。

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