CATL: contrast adaptive transfer learning for cross-system log anomaly detection

Junwei Zhou, Yafei Li, Xiangtian Yu, Yuxuan Zhao
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Abstract

Syslogs play a crucial role in maintenance and troubleshooting, as they document the operational status and key events within computer systems. However, traditional methods of anomaly detection in Syslog face challenges due to the sheer volume and diversity of logs, making cross-system anomaly detection difficult. To address those challenges, this paper introduces CATL, a pioneering Contrast Adaptive Transfer Learning with Bidirectional Long Short-Term Memory (BiLSTM), which can effectively extract contextual features of the log sequence from both directions. CATL overcomes the difficulties arising from massive, less-correlated logs between different systems by leveraging a combination of labeled data from source and target systems and optimizing the Contrastive Domain Discrepancy (CDD) metric. This allows CATL to accurately model discrepancies within and across log classes, minimizing intra-class domain discrepancy while maximizing inter-class domain discrepancy in log sequence features from different domains to match existing anomaly detection decision boundaries better. Our empirical studies, conducted on prominent benchmarks including HDFS, Hadoop, Thunderbird, BGL, and Spirit, demonstrate that CATL addresses the syntactic diversity of log systems and outperforms existing methods in cross-system anomaly detection.
CATL:用于跨系统日志异常检测的对比自适应迁移学习
Syslog 记录了计算机系统的运行状态和关键事件,在维护和故障排除方面发挥着至关重要的作用。然而,传统的 Syslog 异常检测方法因日志数量庞大、种类繁多而面临挑战,难以进行跨系统异常检测。为了应对这些挑战,本文介绍了 CATL,这是一种具有双向长短期记忆(BiLSTM)的开创性对比自适应迁移学习方法,可以有效地从两个方向提取日志序列的上下文特征。CATL 综合利用源系统和目标系统的标记数据,优化对比域差异 (CDD) 指标,从而克服了不同系统之间的大量不相关日志所带来的困难。这样,CATL 就能对日志类别内和类别间的差异进行精确建模,将不同领域日志序列特征的类内领域差异最小化,同时将类间领域差异最大化,从而更好地匹配现有的异常检测决策边界。我们在 HDFS、Hadoop、Thunderbird、BGL 和 Spirit 等著名基准上进行的实证研究表明,CATL 可以解决日志系统的语法多样性问题,在跨系统异常检测方面优于现有方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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