论文标题

对分布式系统中基于图的深度学习的调查

A Survey of Graph-based Deep Learning for Anomaly Detection in Distributed Systems

论文作者

Pazho, Armin Danesh, Noghre, Ghazal Alinezhad, Purkayastha, Arnab A, Vempati, Jagannadh, Martin, Otto, Tabkhi, Hamed

论文摘要

异常检测是复杂分布式系统中的至关重要任务。对检测异常检测的要求和挑战的透彻理解对于此类系统的安全至关重要,尤其是对于现实世界的部署。尽管有许多处理此问题的作品和应用程序域,但很少有人试图对此类系统进行深入了解。在这项调查中,我们探讨了基于图的算法识别分布式系统中异常情况的潜力。这些系统可能是异质的或均匀的,这可能会导致不同的要求。我们的目标之一是对基于图的方法进行深入研究,以在概念上分析其处理现实世界中挑战的能力,例如异质性和动态结构。这项研究概述了该领域的最新研究(SOTA)研究文章,并比较和对比其特征。为了促进更全面的理解,我们介绍了三个具有不同抽象用例的系统。我们研究了此类系统中涉及的异常检测的具体挑战。随后,我们阐明了图在此类系统中的功效,并阐明了它们的优势。然后,我们深入研究了SOTA方法,并突出了它们的优势和劣势,指出了可能改进和未来工作的领域。

Anomaly detection is a crucial task in complex distributed systems. A thorough understanding of the requirements and challenges of anomaly detection is pivotal to the security of such systems, especially for real-world deployment. While there are many works and application domains that deal with this problem, few have attempted to provide an in-depth look at such systems. In this survey, we explore the potentials of graph-based algorithms to identify anomalies in distributed systems. These systems can be heterogeneous or homogeneous, which can result in distinct requirements. One of our objectives is to provide an in-depth look at graph-based approaches to conceptually analyze their capability to handle real-world challenges such as heterogeneity and dynamic structure. This study gives an overview of the State-of-the-Art (SotA) research articles in the field and compare and contrast their characteristics. To facilitate a more comprehensive understanding, we present three systems with varying abstractions as use cases. We examine the specific challenges involved in anomaly detection within such systems. Subsequently, we elucidate the efficacy of graphs in such systems and explicate their advantages. We then delve into the SotA methods and highlight their strength and weaknesses, pointing out the areas for possible improvements and future works.

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