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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

Unsupervised Framework for Evaluating and Explaining Structural Node Embeddings of Graphs

TL;DR: In this paper , the authors propose a framework for unsupervised ranking of structural graph embeddings, which produces information which predefined node features the embedding learns, how well it learns them, and which dimensions in the embedded space represent the predicted node features.
Journal ArticleDOI

Are we really making much progress in unsupervised graph outlier detection? Revisiting the problem with new insight and superior method

TL;DR: A novel variance-based model to detect structural outliers, which is more robust to different injection settings is devised, and a new framework, Variance-based Graph Outlier Detection (VGOD), which combines the variance- based model and attribute recon- struction models to detect outliers in a balanced way is proposed.
Journal ArticleDOI

Collaborative Anomaly Detection

TL;DR: This work proposes collaborative anomaly detection (CAD) to jointly learn all tasks with an embedding en-coding correlations among tasks, and explores CAD with conditional density estimation and conditional likelihood ratio estimation.
Journal ArticleDOI

Experimental Study of Machine Learning Methods in Anomaly Detection

TL;DR: Ensemble model consisting of several unsupervised classification algorithms has been proposed to increase the efficiency of classification algorithms and showed a higher accuracy in the detection of anomalies compared to the results shown by the classification algorithms separately.
Book ChapterDOI

AUnet: An Unsupervised Method for Answer Reliability Evaluation in Community QA Systems

TL;DR: A novel unsupervised answer evaluation method exploiting Answer-User association Network is proposed based on the constructed network, which outperforms existing approaches and can be obtained simultaneously by an iterative process.
References
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Time series analysis, forecasting and control

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.