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LogGAN: A Sequence-Based Generative Adversarial Network for Anomaly Detection Based on System Logs

机译:Loggan:基于系统日志的异常检测的基于序列的生成对抗网络

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System logs which trace system states and record valuable events comprise a significant component of any computer system in our daily life. There exist abundant information (i.e., normal and abnormal instances) involved in logs which assist administrators in diagnosing and maintaining the operation of the system. If diverse and complex anomalies (i.e., bugs and failures) cannot be detected and eliminated efficiently, the running workflows and transactions, even the system, would break down. Therefore, anomaly detection has become increasingly significant and attracted a lot of research attention. However, current approaches concentrate on the anomaly detection in a high-level granularity of logs (i.e., session) instead of detecting log-level anomalies which weakens the efficiency of responding anomalies and the diagnosis of system failures. To overcome the limitation, we propose a sequence-based generative adversarial network for anomaly detection based on system logs named LogGAN which detects log-level anomalies based on the patterns (i.e., the combination of latest logs). In addition, the generative adversarial network-based model relieves the effect of imbalance between normal and abnormal instances to improve the performance of capturing anomalies. To evaluate LogGAN, we conduct extensive experiments on two real-world datasets, and the experimental results show the effectiveness of our proposed approach to log-level anomaly detection.
机译:系统日志哪些跟踪系统状态和记录有价值的事件包括我们日常生活中任何计算机系统的重要组成部分。在日志中涉及的信息(即正常和异常的实例)有助于帮助管理员诊断和维护系统的操作。如果无法有效地检测和消除多种和复杂的异常(即,错误和故障),运行的工作流程和交易甚至系统都会分解。因此,异常检测变得越来越重要,吸引了很多研究的关注。然而,目前的方法集中在日志的高级粒度(即,会话)中的异常检测,而不是检测损害响应异常的效率和系统故障诊断的日志级异常。为了克服限制,我们提出了一种基于基于系统日志的异常检测的基于序列的生成对抗网络,该系统日志基于模式检测了对数级异常(即最新日志的组合)。此外,基于生成的敌对网络的模型可缓解正常情况和异常情况之间不平衡的影响,以提高捕获异常的性能。为了评估Loggan,我们对两个现实世界数据集进行了广泛的实验,实验结果表明我们提出的对数水平异常检测方法的有效性。

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