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Oversampling Log Messages using A Sequence Generative Adversarial Network for Anomaly Detection and Classification

机译:使用序列生成的对冲网络用于异常检测和分类的过采样日志消息

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摘要

Dealing with imbalanced data is one of the main challenges in machine/deep learning algorithms for classification. This issue is more important with log message data as it is typically very imbalanced and negative logs are rare. In this paper, a model is proposed to generate text log messages using a SeqGAN network. Then features are extracted using an Autoencoder and anomaly detection is done using a GRU network. The proposed model is evaluated with two imbalanced log data sets, namely BGL and Openstack. Results are presented which show that oversampling and balancing data increases the accuracy of anomaly detection and classification.
机译:处理不平衡数据是机器/深度学习算法的分类主要挑战之一。此问题与日志消息数据更重要,因为它通常非常不平衡,负日志很少见。在本文中,提出了一种模型来使用SEQGAN网络生成文本日志消息。然后使用AutoEncoder提取特征,并使用GRU网络完成异常检测。所提出的模型用两个不平衡的日志数据集进行评估,即BGL和OpenStack。提出了结果,表明过采样和平衡数据增加了异常检测和分类的准确性。

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