利用日志实体图上的语义关联挖掘对交错日志数据进行异常检测

IF 6.5 1区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Guojun Chu;Jingyu Wang;Qi Qi;Haifeng Sun;Zirui Zhuang;Bo He;Yuhan Jing;Lei Zhang;Jianxin Liao
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引用次数: 0

摘要

日志记录了软件系统运行状态的重要信息,可用于异常检测和故障诊断。然而,在处理相互影响的交错日志和实体时,技术很难有效地执行。虽然手动为每个数据集指定分组字段可以处理单个分组场景,但仍然无法解决多个和异构分组的问题。为了突破这些限制,我们首先设计了一种日志语义关联挖掘方法,将日志序列转换为日志实体图,然后提出了一种新的日志异常检测模型Lograph。利用语义关联可以隐式地对日志进行分组,并整理实体之间复杂的依赖关系,这在现有文献中被忽视。此外,利用异构图注意网络有效捕获日志和实体的异常模式,其中日志-实体图作为数据管理和特征工程模块。我们在真实的测井数据集上评估了我们的模型,并与9个基线模型进行了比较。实验结果表明,Lograph可以提高异常检测的准确性,特别是在实体关系复杂、分组策略不适用的数据集中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly Detection on Interleaved Log Data With Semantic Association Mining on Log-Entity Graph
Logs record crucial information about runtime status of software system, which can be utilized for anomaly detection and fault diagnosis. However, techniques struggle to perform effectively when dealing with interleaved logs and entities that influence each other. Although manually specifying a grouping field for each dataset can handle the single grouping scenario, the problems of multiple and heterogeneous grouping still remain unsolved. To break through these limitations, we first design a log semantic association mining approach to convert log sequences into Log-Entity Graph, and then propose a novel log anomaly detection model named Lograph. The semantic association can be utilized to implicitly group the logs and sort out complex dependencies between entities, which have been overlooked in existing literature. Also, a Heterogeneous Graph Attention Network is utilized to effectively capture anomalous patterns of both logs and entities, where Log-Entity Graph serves as a data management and feature engineering module. We evaluate our model on real-world log datasets, comparing with nine baseline models. The experimental results demonstrate that Lograph can improve the accuracy of anomaly detection, especially on the datasets where entity relationships are intricate and grouping strategies are not applicable.
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来源期刊
IEEE Transactions on Software Engineering
IEEE Transactions on Software Engineering 工程技术-工程:电子与电气
CiteScore
9.70
自引率
10.80%
发文量
724
审稿时长
6 months
期刊介绍: IEEE Transactions on Software Engineering seeks contributions comprising well-defined theoretical results and empirical studies with potential impacts on software construction, analysis, or management. The scope of this Transactions extends from fundamental mechanisms to the development of principles and their application in specific environments. Specific topic areas include: a) Development and maintenance methods and models: Techniques and principles for specifying, designing, and implementing software systems, encompassing notations and process models. b) Assessment methods: Software tests, validation, reliability models, test and diagnosis procedures, software redundancy, design for error control, and measurements and evaluation of process and product aspects. c) Software project management: Productivity factors, cost models, schedule and organizational issues, and standards. d) Tools and environments: Specific tools, integrated tool environments, associated architectures, databases, and parallel and distributed processing issues. e) System issues: Hardware-software trade-offs. f) State-of-the-art surveys: Syntheses and comprehensive reviews of the historical development within specific areas of interest.
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