TL;DR
This survey comprehensively reviews deep learning methods for graph anomaly detection, highlighting current approaches, resources, and future research directions to advance the field.
Contribution
It provides a systematic overview of deep learning techniques for graph anomaly detection, including open-source tools, datasets, evaluation metrics, and future research challenges.
Findings
Compiled open-source implementations and datasets
Identified key challenges and future research directions
Provided a unified framework for understanding graph anomaly detection
Abstract
Anomalies represent rare observations (e.g., data records or events) that deviate significantly from others. Over several decades, research on anomaly mining has received increasing interests due to the implications of these occurrences in a wide range of disciplines. Anomaly detection, which aims to identify rare observations, is among the most vital tasks in the world, and has shown its power in preventing detrimental events, such as financial fraud, network intrusion, and social spam. The detection task is typically solved by identifying outlying data points in the feature space and inherently overlooks the relational information in real-world data. Graphs have been prevalently used to represent the structural information, which raises the graph anomaly detection problem - identifying anomalous graph objects (i.e., nodes, edges and sub-graphs) in a single graph, or anomalous graphs…
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