Unifying Unsupervised Graph-Level Anomaly Detection and Out-of-Distribution Detection: A Benchmark
Yili Wang, Yixin Liu, Xu Shen, Chenyu Li, Kaize Ding, Rui Miao, Ying, Wang, Shirui Pan, Xin Wang

TL;DR
This paper introduces a comprehensive benchmark unifying unsupervised graph-level anomaly detection and out-of-distribution detection, enabling consistent evaluation across 35 datasets and 18 methods to advance safe graph machine learning.
Contribution
It presents a unified evaluation framework and benchmark that bridges the gap between GLAD and GLOD, facilitating fair comparison and analysis of methods.
Findings
Identifies strengths and limitations of existing methods.
Provides insights into effectiveness and robustness.
Offers a new open-source evaluation toolkit.
Abstract
To build safe and reliable graph machine learning systems, unsupervised graph-level anomaly detection (GLAD) and unsupervised graph-level out-of-distribution (OOD) detection (GLOD) have received significant attention in recent years. Though those two lines of research indeed share the same objective, they have been studied independently in the community due to distinct evaluation setups, creating a gap that hinders the application and evaluation of methods from one to the other. To bridge the gap, in this work, we present a \underline{\textbf{U}}nified \underline{\textbf{B}}enchmark for unsupervised \underline{\textbf{G}}raph-level \underline{\textbf{O}}OD and anoma\underline{\textbf{L}}y \underline{\textbf{D}}etection (\ourmethod), a comprehensive evaluation framework that unifies GLAD and GLOD under the concept of generalized graph-level OOD detection. Our benchmark encompasses 35…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Network Security and Intrusion Detection · Fault Detection and Control Systems
MethodsSoftmax · Attention Is All You Need
