Spatio-Temporal Attention Graph Neural Network: Explaining Causalities With Attention
arXiv cs.LG / 3/12/2026
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Key Points
- The paper proposes a Spatio-Temporal Attention Graph Neural Network (STA-GNN) for unsupervised and explainable anomaly detection in industrial control systems (ICS).
- It models sensors, controllers, and network entities as nodes in a dynamically learned graph to capture interdependencies across physical processes and communication patterns.
- Attention mechanisms identify influential relationships and potential causal pathways behind detected events, supporting explainability across multiple data modalities including SCADA measurements, network features, and payload features.
- A conformal prediction strategy is integrated to control false alarm rates and monitor performance under environmental drift, highlighting drift-aware evaluation for reliable deployment.
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