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Local outlier factor use for the network flow anomaly detection

机译:局部异常因素用于网络流量异常检测

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Internet users and computer networks constantly suffer from increasing number of cyberattacks. During the process of seeking how to reduce the risk and possible consequences of the attacks, it is very important to identify the attacks at the initial stage of their realization. For this purpose, the anomaly detection systems, a subset of intrusion detection systems, can be applied. The main advantage of anomaly‐based systems is the ability to detect unknown attacks. We propose a novel approach to detect the network flow anomalies. The method relies on aggregated network flow metrics and is based on local outlier factor algorithm, which evaluates each event's uniqueness on the basis of distance from the k ‐nearest neighbours. In our research, 15 different groups of features (a total of 74 features) were suggested to detect anomalous network flows. According to experimental results, the best groups of features were identified with the highest values of precision, recall and F‐measure. Copyright ? 2015 John Wiley & Sons, Ltd. In this paper, we presented a novel approach to detect network flow anomalies. The method is based on local outlier factor algorithm. Fifteen groups of features (a total of 74 features) were suggested to detect anomalous network flows. We found that the best results of detection of anomalous flows using suggested features were obtained when k parameter of local outlier factor algorithm is equal to 8‐10% of all data records used in the experiment and optimal threshold value is 3.
机译:互联网用户和计算机网络不断遭受越来越多的网络攻击。在寻求如何降低攻击风险和可能后果的过程中,非常重要的一点是在攻击实现的最初阶段就对其进行识别。为此,可以应用异常检测系统,即入侵检测系统的子集。基于异常的系统的主要优点是能够检测未知攻击。我们提出了一种新颖的方法来检测网络流量异常。该方法依赖于聚合的网络流量指标,并且基于局部离群因子算法,该算法基于与k个最近邻居的距离来评估每个事件的唯一性。在我们的研究中,建议使用15个不同的特征组(共74个特征)来检测异常网络流量。根据实验结果,最好的特征组被确定为具有最高的精度,查全率和F测量值。版权? 2015 John Wiley&Sons,Ltd.在本文中,我们提出了一种检测网络流量异常的新颖方法。该方法基于局部离群因子算法。建议使用15组特征(总共74个特征)来检测异常网络流量。我们发现,当局部离群因子算法的 k参数等于实验中使用的所有数据记录的8-10%且最佳阈值为3时,使用建议的特征检测异常流的最佳结果获得了。

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