论文标题
为不一致的ICT系统的连续异常检测分开深度学习模型
Dividing Deep Learning Model for Continuous Anomaly Detection of Inconsistent ICT Systems
论文作者
论文摘要
健康监测对于维护可靠的信息和通信技术(ICT)系统非常重要。基于机器学习的异常检测方法,该方法训练一个用于描述“正态性”的模型,可以监视ICT系统状态。但是,当由于更换某些设备而导致的受监视日志数据的类型更改训练数据的类型时,无法使用这些方法。因此,此类方法可能会忽略日志数据更改时出现的异常。为了解决这个问题,我们提出了一种基于日志数据相关性的深度学习模型的ICT系统监测方法。我们还提出了一种算法,用于从深度学习模型中提取日志数据的相关性,并基于相关性分离日志数据。当某些日志数据更改时,我们的方法可以继续使用不受日志数据更改影响的分开模型进行健康监视。我们介绍了涉及基准数据和真实日志数据的实验的结果,这些实验表明我们使用分隔的模型的方法不会降低异常检测准确性,并且可以分配异常检测模型,即使某些日志数据更改,也可以继续监视网络状态。
Health monitoring is important for maintaining reliable information and communications technology (ICT) systems. Anomaly detection methods based on machine learning, which train a model for describing "normality" are promising for monitoring the state of ICT systems. However, these methods cannot be used when the type of monitored log data changes from that of training data due to the replacement of certain equipment. Therefore, such methods may dismiss an anomaly that appears when log data changes. To solve this problem, we propose an ICT-systems-monitoring method with deep learning models divided based on the correlation of log data. We also propose an algorithm for extracting the correlations of log data from a deep learning model and separating log data based on the correlation. When some of the log data changes, our method can continue health monitoring with the divided models which are not affected by changes in the log data. We present the results from experiments involving benchmark data and real log data, which indicate that our method using divided models does not decrease anomaly detection accuracy and a model for anomaly detection can be divided to continue monitoring a network state even if some the log data change.