Laplacian Change Point Detection for Single and Multi-view Dynamic
Graphs
- URL: http://arxiv.org/abs/2302.01204v1
- Date: Thu, 2 Feb 2023 16:30:43 GMT
- Title: Laplacian Change Point Detection for Single and Multi-view Dynamic
Graphs
- Authors: Shenyang Huang, Samy Coulombe, Yasmeen Hitti, Reihaneh Rabbany,
Guillaume Rabusseau
- Abstract summary: We focus on change point detection in dynamic graphs and address three main challenges associated with this problem.
We first propose Laplacian Anomaly Detection (LAD) which uses the spectrum of graph Laplacian as the low dimensional embedding of the graph structure at each snapshot.
Next, we propose MultiLAD, a simple and effective generalization of LAD to multi-view graphs.
- Score: 9.663142156296862
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Dynamic graphs are rich data structures that are used to model complex
relationships between entities over time. In particular, anomaly detection in
temporal graphs is crucial for many real world applications such as intrusion
identification in network systems, detection of ecosystem disturbances and
detection of epidemic outbreaks. In this paper, we focus on change point
detection in dynamic graphs and address three main challenges associated with
this problem: i). how to compare graph snapshots across time, ii). how to
capture temporal dependencies, and iii). how to combine different views of a
temporal graph. To solve the above challenges, we first propose Laplacian
Anomaly Detection (LAD) which uses the spectrum of graph Laplacian as the low
dimensional embedding of the graph structure at each snapshot. LAD explicitly
models short term and long term dependencies by applying two sliding windows.
Next, we propose MultiLAD, a simple and effective generalization of LAD to
multi-view graphs. MultiLAD provides the first change point detection method
for multi-view dynamic graphs. It aggregates the singular values of the
normalized graph Laplacian from different views through the scalar power mean
operation. Through extensive synthetic experiments, we show that i). LAD and
MultiLAD are accurate and outperforms state-of-the-art baselines and their
multi-view extensions by a large margin, ii). MultiLAD's advantage over
contenders significantly increases when additional views are available, and
iii). MultiLAD is highly robust to noise from individual views. In five real
world dynamic graphs, we demonstrate that LAD and MultiLAD identify significant
events as top anomalies such as the implementation of government COVID-19
interventions which impacted the population mobility in multi-view traffic
networks.
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