Network anomaly detection based on keyword embedding log

Yong Song, Zhiwei Yan, Yukun Qin, Yuchen Xie, Xiaozhou Ye, Ye Ouyang
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Abstract

Log anomaly detection is an important and challenging task in the field of Artificial Intelligence for IT Operations (AIOps). Logs that record important runtime information are widely used for troubleshooting purposes. There have been many studies that use log data to construct deep learning methods for detecting system anomalies, which are usually based on log parsing. However, they ignore the effect of keywords that are promising for system status analysis. Here, we propose KELog (Keyword Embedding Log), a novel log anomaly detection approach that utilizes keyword information. We build a keyword library by keyword information extraction and fuse them into log representations. In this way, KELog can raise the reliability of anomaly detection. The experimental results on a real-world log dataset of a communications operator show that the F1 score of our proposed KELog method achieves a maximum increase of 0.341 compared with the commonly used machine learning algorithms (PCA, SVM, Invaiant Mining) and a maximum increase of 0.039 compared with deep learning algorithms (DeepLog, LogBERT) respectively. In 2021, ITU launched the second ITU AI/ML in 5G Challenge. We used KELog to participate in the thematic track of the Artificial Intelligence Innovation and Application Competition in the China Division, and won first place with a full F1 score.
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基于关键字嵌入日志的网络异常检测
日志异常检测是人工智能IT运维(AIOps)领域的一项重要且具有挑战性的任务。记录重要运行时信息的日志广泛用于故障排除。已有许多研究利用日志数据构建深度学习方法来检测系统异常,这些方法通常基于日志解析。然而,它们忽略了对系统状态分析有希望的关键字的作用。在这里,我们提出了KELog(关键字嵌入日志),这是一种利用关键字信息的新型日志异常检测方法。通过提取关键字信息,构建关键字库,并将其融合成日志表示。通过这种方式,KELog可以提高异常检测的可靠性。在通信运营商真实日志数据集上的实验结果表明,本文提出的KELog方法的F1分数与常用的机器学习算法(PCA、SVM、Invaiant Mining)相比最大提高了0.341,与深度学习算法(DeepLog、LogBERT)相比最大提高了0.039。2021年,国际电联发起了第二届国际电联5G AI/ML挑战赛。我们使用KELog参加了中国赛区人工智能创新与应用大赛的主题赛道,并以F1满分获得第一名。
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