Log Message Anomaly Detection with Oversampling

Amir Farzad, T. Gulliver
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引用次数: 6

Abstract

Imbalanced data is a significant challenge in classification with machine learning algorithms. This is particularly important with log message data as negative logs are sparse so this data is typically imbalanced. In this paper, a model to generate text log messages is proposed which employs a SeqGAN network. An Autoencoder is used for feature extraction and anomaly detection is done using a GRU network. The proposed model is evaluated with three imbalanced log data sets, namely BGL, OpenStack, and Thunderbird. Results are presented which show that appropriate oversampling and data balancing improves anomaly detection accuracy.
过采样的日志消息异常检测
不平衡数据是机器学习算法分类中的一个重大挑战。这对于日志消息数据尤其重要,因为负日志是稀疏的,因此这些数据通常是不平衡的。本文提出了一种利用SeqGAN网络生成文本日志消息的模型。自动编码器用于特征提取,异常检测使用GRU网络完成。使用三个不平衡的日志数据集,即BGL、OpenStack和Thunderbird,对所提出的模型进行了评估。结果表明,适当的过采样和数据平衡提高了异常检测的准确性。
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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