Publicación: Quantum machine learning for intrusion detection of distributed denial of service attacks: a comparative overview
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E. D. Payares, J. C. Martinez-Santos, "Quantum machine learning for
intrusion detection of distributed denial of service attacks: a comparative
overview," Proc. SPIE 11699, Quantum Computing, Communication, and
Simulation, 116990B (5 March 2021); doi: 10.1117/12.2593297
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In recent years, we have seen an increase in computer attacks through our communication networks worldwide, whether due to cybersecurity systems' vulnerability or their absence. This paper presents three quantum models to detect distributed denial of service attacks. We compare Quantum Support Vector Machines, hybrid Quantum- Classical Neural Networks, and a two-circuit ensemble model running parallel on two quantum processing units. Our work demonstrates quantum models' e ectiveness in supporting current and future cybersecurity systems by obtaining performances close to 100%, being 96% the worst-case scenario. It compares our models' performance in terms of accuracy and consumption of computational resources.