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The Class Overlap Model for System Log Anomaly Detection Based on Ensemble Learning

机译:基于集成学习的系统日志异常检测的类重叠模型

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Using machine learning to detect system log data is essential. It is prone to the phenomenon of class overlap because of too many similar system log data. The occurrence of this phenomenon will have a serious impact on the anomaly detection of the system logs. In order to solve the problem of class overlap in system logs, this paper proposes an anomaly detection model for class overlap on system logs. We first calculate the relationship between the sample data and the membership of different classes, normal or anomaly, and use the fuzziness to separate the sample data of the overlapping parts of the classes from the data of the other parts. AdaBoost, an ensemble learning approach, is used to detect overlapping data. Compared with machine learning algorithms, ensemble learning can better classify the data of the overlapping parts, so as to achieve the purpose of detecting the anomalies of the system logs. Experimental results show that our model can be effectively applied in a variety of basic algorithms, and the results of each measure have been improved.
机译:使用机器学习来检测系统日志数据至关重要。由于太多相似的系统日志数据,容易出现类重叠的现象。这种现象的发生将严重影响系统日志的异常检测。为了解决系统日志中类重叠的问题,提出了一种系统日志中类重叠的异常检测模型。我们首先计算样本数据与不同类别的成员(正常或异常)之间的关系,并使用模糊性将类别的重叠部分的样本数据与其他部分的数据分开。 AdaBoost是一种集成学习方法,用于检测重叠数据。与机器学习算法相比,集成学习可以更好地对重叠部分的数据进行分类,从而达到检测系统日志异常的目的。实验结果表明,该模型可以有效地应用于各种基本算法,并且改进了每种度量的结果。

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