基于空间池化的大规模日志异常检测

Rin Hirakawa , Hironori Uchida , Asato Nakano , Keitaro Tominaga , Yoshihisa Nakatoh
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引用次数: 2

摘要

日志数据是理解系统运行时行为的重要线索,但近年来软件系统的复杂性使得工程师需要分析的数据庞大且难以理解。虽然基于深度学习的基于日志的异常检测方法能够实现高度精确的检测,但运行模型所需的计算性能变得非常高。在本研究中,我们提出了一种基于稀疏特征和模型内部状态的异常检测方法SPClassifier,并探讨了在没有gpu等计算资源的环境下进行异常检测的可行性。在BGL数据集上对最新的深度学习模型进行了基准测试,结果表明,即使在训练数据量较小的情况下,所提出的方法也能达到与这些方法相当的准确率,并且具有较高的异常检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large scale log anomaly detection via spatial pooling

Log data is an important clue to understanding the behaviour of a system at runtime, but the complexity of software systems in recent years has made the data that engineers need to analyse enormous and difficult to understand. While log-based anomaly detection methods based on deep learning have enabled highly accurate detection, the computational performance required to operate the models has become very high. In this study, we propose an anomaly detection method, SPClassifier, based on sparse features and the internal state of the model, and investigate the feasibility of anomaly detection that can be utilized in environments without computing resources such as GPUs. Benchmark with the latest deep learning models on the BGL dataset shows that the proposed method can achieve competitive accuracy with these methods and has a high level of anomaly detection performance even when the amount of training data is small.

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