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A novel Multi-Threaded K-Means clustering approach for intrusion detection

机译:一种新颖的多线程K-Means聚类入侵检测方法

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Due to the proliferation of high-speed internet access, more and more organizations are becoming vulnerable to potential cyber-attacks. An intrusion is defined as any set of actions that compromise the integrity, confidentiality or availability of a resource. Intrusion Detection System (IDS), as the main security defending technique, is widely used against malicious attacks. IDS system should be good enough to detect existing attacks as well as novel attacks at high speed. Thus to fulfil these requirements a new novel Multi-Threaded K-Means clustering approach has been used which has resulted in high detection rate and low false alarm rate. A subset of KDD99 Data set has been used as an input dataset for experiments.
机译:由于高速互联网访问的激增,越来越多的组织变得容易受到潜在的网络攻击。入侵定义为损害资源完整性,机密性或可用性的任何一组操作。入侵检测系统(IDS)作为主要的安全防护技术,已广泛用于防御恶意攻击。 IDS系统应该足够好,可以高速检测到现有的攻击以及新颖的攻击。因此,为了满足这些要求,使用了一种新颖的多线程K-Means聚类方法,该方法导致了高检测率和低虚警率。 KDD99数据集的子集已用作实验的输入数据集。

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