Incremental Causal Graph Learning for Online Cyberattack Detection in Cyber-Physical Infrastructures
Arun Vignesh Malarkkan, Dongjie Wang, Haoyue Bai, and Yanjie Fu

TL;DR
This paper introduces INCADET, an incremental causal graph learning framework designed for real-time cyberattack detection in critical infrastructures, effectively adapting to evolving attack patterns and reducing false positives.
Contribution
The paper presents a novel online causal graph learning method that updates system models incrementally, overcoming static limitations and catastrophic forgetting in cyberattack detection.
Findings
INCADET outperforms static causal models in accuracy.
The framework adapts effectively to evolving attack scenarios.
It maintains robustness with limited supervision.
Abstract
The escalating threat of cyberattacks on real-time critical infrastructures poses serious risks to public safety, demanding detection methods that effectively capture complex system interdependencies and adapt to evolving attack patterns. Traditional real-time anomaly detection techniques often suffer from excessive false positives due to their statistical sensitivity to high data variance and class imbalance. To address these limitations, recent research has explored modeling causal relationships among system components. However, prior work mainly focuses on offline causal graph-based approaches that require static historical data and fail to generalize to real-time settings. These methods are fundamentally constrained by: (1) their inability to adapt to dynamic shifts in data distribution without retraining, and (2) the risk of catastrophic forgetting when lacking timely supervision…
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