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A two-tier network based intrusion detection system architecture using machine learning approach

机译:使用机器学习方法的基于两层网络的入侵检测系统架构

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Intrusion detection systems are systems that can detect any kind of malicious attacks, corrupted data or any kind of intrusion that can pose threat to our systems. In our paper, we would like to present a novel approach to build a network based intrusion detection system using machine learning approach. We have proposed a two-tier architecture to detect intrusions on network level. Network behaviour can be classified as misuse detection and anomaly detection. As our analysis depends on the network behaviour, we have considered data packets of TCP/IP as our input data. After, pre-processing the data by parameter filtering, we build a autonomous model on training set using hierarchical agglomerative clustering. Further, data gets classified as regular traffic pattern or intrusions using KNN classification. This reduces cost-overheads. Misuse detection is conducted using MLP algorithm. Anomaly detection is conducted using Reinforcement algorithm where network agents learn from the environment and take decisions accordingly. The TP rate of our architecture is 0.99 and false positive rate is 0.01. Thus, our architecture provides a high level of security by providing high TP and low false positive rate. And, it also analyzes the usual network patterns and learns incrementally (to build autonomous system) to separate normal data and threats.
机译:入侵检测系统是可以检测任何种类的恶意攻击,损坏的数据或任何可能对我们的系统构成威胁的入侵的系统。在我们的论文中,我们想提出一种新颖的方法来使用机器学习方法来构建基于网络的入侵检测系统。我们提出了一种两层体系结构来检测网络级别的入侵。网络行为可以分为滥用检测和异常检测。由于我们的分析取决于网络行为,因此我们将TCP / IP数据包视为输入数据。在通过参数过滤对数据进行预处理之后,我们使用分层的聚类聚类在训练集上建立了一个自治模型。此外,使用KNN分类将数据分类为常规流量模式或入侵。这减少了成本开销。滥用检测是使用MLP算法进行的。使用强化算法进行异常检测,其中网络代理从环境中学习并做出相应的决策。我们架构的TP率为0.99,误报率为0.01。因此,我们的架构通过提供高TP和低误报率来提供高级别的安全性。并且,它还分析常用的网络模式,并逐步学习(以构建自治系统)以区分正常数据和威胁。

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