A Framework for Drift Detection and Adaptation in AI-driven Anomaly and Threat Detection Systems

dc.contributor.authorLara Gutiérrez, Antonio
dc.contributor.authorFernández-Gago, María del Carmen
dc.contributor.authorOnieva-González, José Antonio
dc.date.accessioned2025-12-16T07:51:01Z
dc.date.available2025-12-16T07:51:01Z
dc.date.created2025
dc.date.issued2025
dc.description.abstractThe dynamic and evolving nature of cybersecurity threats presents significant challenges to anomaly and threat detection systems, particularly those that rely on Artificial Intelligence (AI) as their detection engine. A key limitation of current AI models is their inability to adapt to concept drift, feature drift, and adversarial attacks, which degrade performance over time. Although these phenomena arise from different underlying processes, they all share the effect of misaligning the operational data with the model’s training data. This study introduces the Hybrid Drift Detection and Adaptation Framework (HDDAF), which is a multi-layered AI system that is specifically designed to mitigate concept drift, feature drift, and adversarial attacks in cybersecurity. By framing all three challenges, HDDAF provides a unified approach that detects and responds to both natural evolution and malicious manipulation within a single adaptive pipeline. HDDAF integrates Hoeffding drift detection, feature selection, adversarial training, and incremental learning, allowing it to dynamically adapt through a Mixed-Drift Handling Module, which balances fine-tuning and full retraining. On the CIC-IDS2017 dataset, HDDAF achieves a macro F1 score above 99% and in tests on related datasets, it consistently adapts to data shifts with minimal retraining. An ablation study confirms that each module contributes to overall robustness, and real-time simulations demonstrate its ability to process high-velocity streams with stable latency and resource use. HDDAF’s hybrid design delivers both high accuracy and scalable performance for real-world cybersecurity applications.es_ES
dc.identifier.citationLara-Gutierrez, A., Fernandez-Gago, C. & Onieva, J.A. A Framework for Drift Detection and Adaptation in AI-driven Anomaly and Threat Detection Systems. Int. J. Inf. Secur. 24, 199 (2025). https://doi.org/10.1007/s10207-025-01118-9es_ES
dc.identifier.doi10.1007/s10207-025-01118-9
dc.identifier.urihttps://hdl.handle.net/10630/41118
dc.language.isoenges_ES
dc.publisherSpringeres_ES
dc.rights.accessRightsopen accesses_ES
dc.subject.otherArtificial Intelligencees_ES
dc.subject.otherConcept Driftes_ES
dc.subject.otherFeature Driftes_ES
dc.subject.otherAdversarial Attackses_ES
dc.titleA Framework for Drift Detection and Adaptation in AI-driven Anomaly and Threat Detection Systemses_ES
dc.typejournal articlees_ES
dc.type.hasVersionAMes_ES
dspace.entity.typePublication
relation.isAuthorOfPublication3eeb1b8e-baef-486b-83e4-b3cd7cc66ab9
relation.isAuthorOfPublicationfafd97ab-7fd5-4caa-89ac-4fb9a0ef827a
relation.isAuthorOfPublication.latestForDiscovery3eeb1b8e-baef-486b-83e4-b3cd7cc66ab9

Files

Original bundle

Now showing 1 - 1 of 1
Loading...
Thumbnail Image
Name:
_CiberIA__Enhanced_Drift_Detection_and_Adaptation_Framework.pdf
Size:
5.53 MB
Format:
Adobe Portable Document Format
Description:

Collections