执行轨迹流中的实时异常检测

Wenke Zhang, F. Bastani, I. Yen, K. Hulin, F. Bastani, L. Khan
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引用次数: 5

摘要

对于已部署的系统,软件故障检测可能具有挑战性。一般情况下,故障行为是通过执行日志来检测的,而执行日志中可能包含大量的执行痕迹,分析异常困难。本文研究并比较了各种基于执行日志的软件故障检测数据挖掘技术的有效性和效率,包括基于聚类的、基于密度的和基于概率自动机的方法。然而,现有的一些算法复杂性高,不能很好地扩展到大数据集。为了解决这个问题,我们提出了一套基于前缀树的异常检测技术。前缀树模型用作执行轨迹的紧凑的少损失数据表示。此外,前缀树距离度量提供了一种有效的启发式方法来指导搜索彼此非常接近的执行跟踪。在基于密度的算法中,使用前缀树距离将k近邻搜索限制在节点的一个小子集中,在不牺牲精度的情况下大大减少了计算时间。实验研究表明,在软件故障的自动识别中,基于前缀树和前缀树距离引导的方法显著加快了速度,在最好的情况下,从几天到几分钟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Anomaly Detection in Streams of Execution Traces
For deployed systems, software fault detection can be challenging. Generally, faulty behaviors are detected based on execution logs, which may contain a large volume of execution traces, making analysis extremely difficult. This paper investigates and compares the effectiveness and efficiency of various data mining techniques for software fault detection based on execution logs, including clustering based, density based, and probabilistic automata based methods. However, some existing algorithms suffer from high complexity and do not scale well to large datasets. To address this problem, we present a suite of prefix tree based anomaly detection techniques. The prefix tree model serves as a compact loss less data representation of execution traces. Also, the prefix tree distance metric provides an effective heuristic to guide the search for execution traces having close proximity to each other. In the density based algorithm, the prefix tree distance is used to confine the K-nearest neighbor search to a small subset of the nodes, which greatly reduces the computing time without sacrificing accuracy. Experimental studies show a significant speedup in our prefix tree based and prefix tree distance guided approaches, from days to minutes in the best cases, in automated identification of software failures.
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