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Network-based anomaly intrusion detection system using SOMs

机译:基于网络的异常侵入检测系统,使用SOMS

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Network-based anomaly intrusion detection systems using artificial neural networks are investigated. From knowledge of only normal traffic data, a mathematical model describing normal traffic is constructed and a test is conducted based on the deviations from the mathematical model. A self-organizing map (SOM) structure is used for constructing the mathematical model describing normal traffic and anomaly detection. The SOM structure preserves topological mappings between representations. A feature which is desired when classifying normal or intrusive behavior for network data, our hypothesis is that normal traffic representing normal behavior would be clustered around one or more cluster centers and any irregular traffic representing abnormal, and possibly suspicious, behavior would be clustered outside of the normal clustering or inside with high quantization error. The SOM is trained with normal traffic data and by considering the best matching unit or clustering region and the quantization error, the type of traffic is determined.
机译:研究了使用人工神经网络的基于网络的异常入侵检测系统。从知识仅仅是正常的交通数据,构造了描述正常流量的数学模型,并基于与数学模型的偏差进行测试。自组织地图(SOM)结构用于构建描述正常流量和异常检测的数学模型。 SOM结构在表示之间保留拓扑映射。对网络数据进行分类正常或侵入行为时需要的特征是,我们的假设是表示正常行为的正常流量将围绕一个或多个集群中心群集,并且代表异常的任何不规则流量,并且可能是可疑的行为将在外面群集具有高量化误差的正常聚类或内部。 SOM具有正常的流量数据,并考虑最佳匹配单元或聚类区域以及量化误差,确定流量的类型。

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