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A Method for Anomaly Detection of User Behaviors Based on Machine Learning

机译:基于机器学习的用户行为异常检测方法

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This paper presents a new anomaly detection method based on machine learning. Applicable to host-based intrusion detection systems, this method uses shell commands as audit data . The method employs shell command sequences of different lengths to characterize behavioral patterns of a network user, and constructs multiple sequence libraries to represent the user's normal behavior profile, In the detection stage, the behavioral patterns in the audit data are mined by a sequence-matching algorithm, and the similarities between the mined patterns and the historical profile are evaluated. These similarities are then smoothed with sliding windows, and the smoothed similarities are used to determine whether the monitored user's behaviors are normal or anomalous. The results of our experience show the method can achieve higher detection accuracy and shorter detection time than the instance-based method presented by Lane T. The method has been successfully applied in practical host-based intrusion detection systems.
机译:本文提出了一种新的基于机器学习的异常检测方法。适用于基于主机的入侵检测系统,此方法使用外壳程序命令作为审核数据。该方法采用不同长度的shell命令序列来表征网络用户的行为模式,并构建多个序列库来表示用户的正常行为特征。在检测阶段,通过序列匹配来挖掘审计数据中的行为模式。算法,并评估了开采模式与历史资料之间的相似性。然后,使用滑动窗口对这些相似性进行平滑处理,并将平滑后的相似性用于确定受监视用户的行为是正常还是异常。我们的经验结果表明,与Lane T提出的基于实例的方法相比,该方法可以实现更高的检测精度和更短的检测时间。该方法已成功应用于实际的基于主机的入侵检测系统中。

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