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A Convolutional Auto-encoder Method for Anomaly Detection on System Logs

机译:一种用于系统日志的异常检测的卷积自动编码器方法

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Anomaly detection on system logs is to report system failures with utilization of console logs collected from devices, which ensures the reliability of systems. Most previous researches split logs into sequential time windows and regarded each window as an independent instance for classification using popular machine learning methods like support vector ma-chine (SVM), however, neglected the time patterns under logs. Those approaches also suffer from information loss due to the vector representation, and high dimensionality if there is a large number of log events. To make up these deficiencies, unlike most traditional methods that used a vector to represent a period behavior at the macro level, we construct a 2D matrix to reveal more detailed system behaviors in the time period by dividing each window into sequential subwindows. To provide a more efficient representation, we further use the ant colony optimization algorithm to find a highly-coupled event template as the horizontal index of the 2D window matrix to replace the disordered one. To capture time dependencies, a multi-module convolutional auto-encoder is configured as that different paralleled modules scan among different time intervals to extract information respectively. These features are then concatenated in latent space as the final input, which contains diversified time information, for classification by SVM. The experiments on Blue Gene/L log dataset showed that our proposed method outperforms the state-of-art SVM method.
机译:对系统日志的异常检测是报告系统故障,并利用从设备收集的控制台日志,这确保了系统的可靠性。最先前的研究将登录分为顺序时间窗口,并将每个窗口视为使用支持向量MA-Chine(SVM)这样的流行计算机学习方法进行分类的独立实例,但是,忽略了日志下的时间模式。如果有大量日志事件,那些方法也遭受由于载体表示而导致的信息损失。为了弥补这些缺陷,与使用载体在宏级别表示期间行为的大多数传统方法不同,我们通过将每个窗口划分为顺序子窗口来构建2D矩阵以在时间段内揭示更多详细的系统行为。为了提供更高效的表示,我们进一步使用蚁群优化算法来找到高耦合的事件模板作为2D窗矩阵的水平索引来替换无序的窗口。为了捕获时间依赖性,多模块卷积自动编码器被配置为不同的并联模块之间的不同时间间隔扫描以分别提取信息。然后,这些功能在潜在空间中连接为最终输入,其中包含多样化的时间信息,用于通过SVM进行分类。蓝色基因/ L日志数据集的实验表明,我们所提出的方法优于现有技术的SVM方法。

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