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An Anomaly Detection Model Based on One-Class SVM to Detect Network Intrusions

机译:基于一类支持向量机的网络入侵检测异常模型

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Intrusion detection occupies a decision position in solving the network security problems. Support Vector Machines (SVMs) are one of the widely used intrusion detection techniques. However, the commonly used two-class SVM algorithms are facing difficulties of constructing the training dataset. That is because in many real application scenarios, normal connection records are easy to be obtained, but attack records are not so. We propose an anomaly detection model based on One-class SVM to detect network intrusions. The one-class SVM adopts only normal network connection records as the training dataset. But after being trained, it is able to recognize normal from various attacks. This just meets the requirements of the anomaly detection. Experimental results on KDDCUP99 dataset show that compared to Probabilistic Neural Network (PNN) and C-SVM, our anomaly detection model based on One-class SVM achieves higher detection rates and yields average better performance in terms of precision, recall and F-value.
机译:入侵检测在解决网络安全问题中占有决定性地位。支持向量机(SVM)是广泛使用的入侵检测技术之一。但是,常用的两类SVM算法面临着构建训练数据集的困难。这是因为在许多实际应用场景中,很容易获得正常的连接记录,而攻击记录却并非如此。我们提出一种基于一类支持向量机的异常检测模型来检测网络入侵。一类SVM仅采用常规网络连接记录作为训练数据集。但是经过训练后,它能够从各种攻击中识别出正常状态。这恰好满足异常检测的要求。在KDDCUP99数据集上的实验结果表明,与概率神经网络(PNN)和C-SVM相比,我们基于一类SVM的异常检测模型实现了更高的检测率,并且在精度,召回率和F值方面平均表现出更好的性能。

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