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Artificial Intelligence in Cybersecurity: A Comprehensive Review and Future Research Agenda

Abstract:

Synthesises 312 peer-reviewed studies on machine-learning-based intrusion detection, adversarial attacks, and Large-Language-Model (LLM) hardening. Finds that deep-learning boosts detection precision by 14 pp but creates new attack surfaces; calls for explainable-AI and red-team benchmarks.

Author:
Wang, Jia; Oliva-Fuentes, Carlos
Year:
2024
Domain:
Dimension:
Region:
Data Type: , ,
MIT Political Science
MIT Political Science
ECIR
GSS