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Outlier Detection with Double-Sided Control Mechanism and Different Priority Weight Values for Network Security

机译:具有双面控制机制的异常检测和网络安全的不同优先级重量值

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A server needs strong security systems. For this goal, a new perspective to network security is won by using data mining paradigms like outlier detection, clustering and classification. This study uses K-Nearest Neighbor (KNN) algorithm for clustering and classification. KNN algorithm needs data warehouse which impersonates user profiles to cluster. Therefore, requested time intervals and requested IPs with text mining are used for user profiles. Users in the network are clustered by calculating optimum k and threshold parameters of KNN algorithm. Finally, over these clusters, new requests are separated as outlier or normal by different threshold values with different priority weight values and average similarities with different priority weight values.
机译:服务器需要强大的安全系统。对于此目标,通过使用像异常检测,聚类和分类等数据挖掘范例赢得了一个新的网络安全的新视角。本研究使用K-Collect邻(KNN)算法进行聚类和分类。 KNN算法需要数据仓库,它将用户配置文件模拟群集。因此,请求的时间间隔和具有文本挖掘的请求的IPS用于用户配置文件。通过计算KNN算法的最佳k和阈值参数来聚类网络中的用户。最后,在这些集群上,通过不同优先级权重值和具有不同优先级重量值的平均相似性的不同阈值分隔为异常值或正常的阈值。

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