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A hybrid method based on Genetic Algorithm, Self-Organised Feature Map, and Support Vector Machine for better Network Anomaly Detection

机译:一种基于遗传算法,自组织特征映射的混合方法,以及用于更好的网络异常检测的支持向量机

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Anomaly-based network intrusion detection techniques are a valuable technology to shield our systems and networks against the malicious activities. Anomaly detection is done by soft margin Support Vector Machine (SVM), which classify the input into any one of the label (normal and anomalous) category with respect to its anomalous behavior. SVM gives much better classification, out of wide variety of class discrimination algorithms which deals with huge collection of data. Here genetic algorithm (GA) and self-organised feature map (SOFM) are used to enhance the feature and information extraction from a huge dataset similar to KDD99. GA gives us the most prominent features contributing to the anomalous behaviour of a connection and SOFM helps to identify similar groups from the dataset by using the similarity metric. These two machine learning algorithms help to reduce the volume of dataset and features to train SVM. The proposed framework GSS (GA-SOFM-SVM) has 10% increase in detection rate and 50% reduction in false positive and false negative rate compared to soft margin SVM.
机译:基于异常的网络入侵检测技术是一种有价值的技术,可以防止我们的系统和网络免受恶意活动。异常检测是通过软保证金支持向量机(SVM)进行的,其将输入分类为与其异常行为的标签(正常和异常)类别中的任何一个。 SVM提供了更好的分类,超出了各种鉴别算法,这些判别算法涉及巨大的数据集合。这里遗传算法(GA)和自组织特征映射(SOFM)用于增强来自类似于KDD99的巨大数据集的特征和信息提取。 GA为我们提供了有助于连接的异常行为和SOFM的最突出的功能有助于通过使用相似度量来识别与数据集的类似组。这两台机器学习算法有助于减少数据集和功能的音量,以训练SVM。与柔软的边距SVM相比,所提出的框架GSS(GA-SOFM-SVM)的检出速率增加10%,误报和假负速率下降50%。

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