ARISE: Graph Anomaly Detection on Attributed Networks via Substructure
Awareness
- URL: http://arxiv.org/abs/2211.15255v3
- Date: Sun, 1 Oct 2023 02:09:49 GMT
- Title: ARISE: Graph Anomaly Detection on Attributed Networks via Substructure
Awareness
- Authors: Jingcan Duan, Bin Xiao, Siwei Wang, Haifang Zhou, Xinwang Liu
- Abstract summary: We propose a new graph anomaly detection framework on attributed networks via substructure awareness (ARISE)
ARISE focuses on the substructures in the graph to discern abnormalities.
Experiments show that ARISE greatly improves detection performance compared to state-of-the-art attributed networks anomaly detection (ANAD) algorithms.
- Score: 70.60721571429784
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recently, graph anomaly detection on attributed networks has attracted
growing attention in data mining and machine learning communities. Apart from
attribute anomalies, graph anomaly detection also aims at suspicious
topological-abnormal nodes that exhibit collective anomalous behavior. Closely
connected uncorrelated node groups form uncommonly dense substructures in the
network. However, existing methods overlook that the topology anomaly detection
performance can be improved by recognizing such a collective pattern. To this
end, we propose a new graph anomaly detection framework on attributed networks
via substructure awareness (ARISE for abbreviation). Unlike previous
algorithms, we focus on the substructures in the graph to discern
abnormalities. Specifically, we establish a region proposal module to discover
high-density substructures in the network as suspicious regions. The average
node-pair similarity can be regarded as the topology anomaly degree of nodes
within substructures. Generally, the lower the similarity, the higher the
probability that internal nodes are topology anomalies. To distill better
embeddings of node attributes, we further introduce a graph contrastive
learning scheme, which observes attribute anomalies in the meantime. In this
way, ARISE can detect both topology and attribute anomalies. Ultimately,
extensive experiments on benchmark datasets show that ARISE greatly improves
detection performance (up to 7.30% AUC and 17.46% AUPRC gains) compared to
state-of-the-art attributed networks anomaly detection (ANAD) algorithms.
Related papers
- Higher-order Structure Based Anomaly Detection on Attributed Networks [25.94747823510297]
We present a higher-order structure based anomaly detection (GUIDE) method.
We exploit attribute autoencoder and structure autoencoder to reconstruct node attributes and higher-order structures.
We also design a graph attention layer to evaluate the significance of neighbors to nodes.
arXiv Detail & Related papers (2024-06-07T07:02:50Z) - ARC: A Generalist Graph Anomaly Detector with In-Context Learning [62.202323209244]
ARC is a generalist GAD approach that enables a one-for-all'' GAD model to detect anomalies across various graph datasets on-the-fly.
equipped with in-context learning, ARC can directly extract dataset-specific patterns from the target dataset.
Extensive experiments on multiple benchmark datasets from various domains demonstrate the superior anomaly detection performance, efficiency, and generalizability of ARC.
arXiv Detail & Related papers (2024-05-27T02:42:33Z) - Alleviating Structural Distribution Shift in Graph Anomaly Detection [70.1022676681496]
Graph anomaly detection (GAD) is a challenging binary classification problem.
Gallon neural networks (GNNs) benefit the classification of normals from aggregating homophilous neighbors.
We propose a framework to mitigate the effect of heterophilous neighbors and make them invariant.
arXiv Detail & Related papers (2024-01-25T13:07:34Z) - Multitask Active Learning for Graph Anomaly Detection [48.690169078479116]
We propose a novel MultItask acTIve Graph Anomaly deTEction framework, namely MITIGATE.
By coupling node classification tasks, MITIGATE obtains the capability to detect out-of-distribution nodes without known anomalies.
Empirical studies on four datasets demonstrate that MITIGATE significantly outperforms the state-of-the-art methods for anomaly detection.
arXiv Detail & Related papers (2024-01-24T03:43:45Z) - SCALA: Sparsification-based Contrastive Learning for Anomaly Detection
on Attributed Networks [19.09775548036214]
Anomaly detection on attributed networks aims to find the nodes whose behaviors are significantly different from other majority nodes.
We present a novel contrastive learning framework for anomaly detection on attributed networks, textbfSCALA, aiming to improve the embedding quality of the network.
Extensive experiments are conducted on five benchmark real-world datasets and the results show that SCALA consistently outperforms all baseline methods significantly.
arXiv Detail & Related papers (2024-01-03T08:51:18Z) - Open-Set Graph Anomaly Detection via Normal Structure Regularisation [30.638274744518682]
Open-set Graph Anomaly Detection (GAD) aims to train a detection model using a small number of normal and anomaly nodes.
Current supervised GAD methods tend to over-emphasise fitting the seen anomalies, leading to many errors of detecting the unseen anomalies as normal nodes.
We propose a novel open-set GAD approach, namely normal structure regularisation (NSReg), to achieve generalised detection ability to unseen anomalies.
arXiv Detail & Related papers (2023-11-12T13:25:28Z) - BOURNE: Bootstrapped Self-supervised Learning Framework for Unified
Graph Anomaly Detection [50.26074811655596]
We propose a novel unified graph anomaly detection framework based on bootstrapped self-supervised learning (named BOURNE)
By swapping the context embeddings between nodes and edges, we enable the mutual detection of node and edge anomalies.
BOURNE can eliminate the need for negative sampling, thereby enhancing its efficiency in handling large graphs.
arXiv Detail & Related papers (2023-07-28T00:44:57Z) - GAD-NR: Graph Anomaly Detection via Neighborhood Reconstruction [36.56631787651942]
Graph Auto-Encoders (GAEs) encode graph data into node representations and identify anomalies by assessing the reconstruction quality of the graphs based on these representations.
We propose GAD-NR, a new variant of GAE that incorporates neighborhood reconstruction for graph anomaly detection.
Extensive experimentation conducted on six real-world datasets validates the effectiveness of GAD-NR, showcasing significant improvements (by up to 30% in AUC) over state-of-the-art competitors.
arXiv Detail & Related papers (2023-06-02T23:23:34Z) - AHEAD: A Triple Attention Based Heterogeneous Graph Anomaly Detection
Approach [23.096589854894884]
AHEAD is an unsupervised graph anomaly detection approach based on the encoder-decoder framework.
We show the superiority of AHEAD on several real-world heterogeneous information networks compared with the state-of-arts in the unsupervised setting.
arXiv Detail & Related papers (2022-08-17T10:08:28Z) - Anomaly Detection on Attributed Networks via Contrastive Self-Supervised
Learning [50.24174211654775]
We present a novel contrastive self-supervised learning framework for anomaly detection on attributed networks.
Our framework fully exploits the local information from network data by sampling a novel type of contrastive instance pair.
A graph neural network-based contrastive learning model is proposed to learn informative embedding from high-dimensional attributes and local structure.
arXiv Detail & Related papers (2021-02-27T03:17:20Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.