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Open AccessJournal ArticleDOI

Graph based anomaly detection and description: a survey

TLDR
This survey aims to provide a general, comprehensive, and structured overview of the state-of-the-art methods for anomaly detection in data represented as graphs, and gives a general framework for the algorithms categorized under various settings.
Abstract
Detecting anomalies in data is a vital task, with numerous high-impact applications in areas such as security, finance, health care, and law enforcement. While numerous techniques have been developed in past years for spotting outliers and anomalies in unstructured collections of multi-dimensional points, with graph data becoming ubiquitous, techniques for structured graph data have been of focus recently. As objects in graphs have long-range correlations, a suite of novel technology has been developed for anomaly detection in graph data. This survey aims to provide a general, comprehensive, and structured overview of the state-of-the-art methods for anomaly detection in data represented as graphs. As a key contribution, we give a general framework for the algorithms categorized under various settings: unsupervised versus (semi-)supervised approaches, for static versus dynamic graphs, for attributed versus plain graphs. We highlight the effectiveness, scalability, generality, and robustness aspects of the methods. What is more, we stress the importance of anomaly attribution and highlight the major techniques that facilitate digging out the root cause, or the `why', of the detected anomalies for further analysis and sense-making. Finally, we present several real-world applications of graph-based anomaly detection in diverse domains, including financial, auction, computer traffic, and social networks. We conclude our survey with a discussion on open theoretical and practical challenges in the field.

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Citations
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Journal ArticleDOI

One-Class Graph Neural Networks for Anomaly Detection in Attributed Networks

TL;DR: One Class Graph Neural Network (OCGNN), a one-class classification framework for graph anomaly detection, is proposed, designed to combine the powerful representation ability of Graph Neural Networks along with the classical one- class objective.
Journal ArticleDOI

An Unsupervised Data-Driven Anomaly Detection Approach for Adverse Health Conditions in People Living With Dementia: Cohort Study

TL;DR: This is the first real-world study to adapt the Contextual Matrix Profile to continuous anomaly detection in a health care scenario, and it is demonstrated how CMP-based anomaly scoring can be used for a cross-patient view of anomaly patterns.
Proceedings ArticleDOI

Anomaly Detection in Car-Booking Graphs

TL;DR: A framework for fraud detection in car-booking systems that uses unsupervised techniques, such as dense subblock discovery, to detect suspicious activity and detects fraud with high precision.
Book ChapterDOI

Survey of Machine Learning Approaches of Anti-money Laundering Techniques to Counter Terrorism Finance

TL;DR: The study aims are to survey the technical aspects of anti-money laundering systems (AML), review the existing machine learning algorithms and techniques applied to detect money laundering patterns, detect unusual behavior and money laundering groups, and pinpoint the study contribution in detecting moneyaundering groups.
Journal ArticleDOI

A graph-based approach to detect unexplained sequences in a log

TL;DR: In this paper, a graph mining approach is proposed to detect anomalous events in computer system log files. But the problem of detecting anomalous event in computer systems log files is not addressed.
References
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TL;DR: In this article, a complete revision of a classic, seminal, and authoritative book that has been the model for most books on the topic written since 1970 is presented, focusing on practical techniques throughout, rather than a rigorous mathematical treatment of the subject.