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  4. Enhancing The Efficiency Of A Cybersecurity Operations Center Using Biomimetic Algorithms Empowered By Deep Q-Learning
 
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Enhancing The Efficiency Of A Cybersecurity Operations Center Using Biomimetic Algorithms Empowered By Deep Q-Learning

Journal
Biomimetics
Date Issued
2024-05-21
Author(s)
Olivares, Rodrigo  
Facultad de Ingeniería  
Omar Salinas
Camilo Ravelo
Ricardo Soto
Broderick Crawford
DOI
10.3390/biomimetics9060307
WoS ID
WOS:001254395100001
Abstract
In the complex and dynamic landscape of cyber threats, organizations require sophisticated strategies for managing Cybersecurity Operations Centers and deploying Security Information and Event Management systems. Our study enhances these strategies by integrating the precision of well-known biomimetic optimization algorithms—namely Particle Swarm Optimization, the Bat Algorithm, the Gray Wolf Optimizer, and the Orca Predator Algorithm—with the adaptability of Deep Q-Learning, a reinforcement learning technique that leverages deep neural networks to teach algorithms optimal actions through trial and error in complex environments. This hybrid methodology targets the efficient allocation and deployment of network intrusion detection sensors while balancing cost-effectiveness with essential network security imperatives. Comprehensive computational tests show that versions enhanced with Deep Q-Learning significantly outperform their native counterparts, especially in complex infrastructures. These results highlight the efficacy of integrating metaheuristics with reinforcement learning to tackle complex optimization challenges, underscoring Deep Q-Learning’s potential to boost cybersecurity measures in rapidly evolving threat environments.
Subjects

Biochemistry

Bioengineering

Biomaterials

Biomedical Engineerin...

Biotechnology

Engineering, Biomedic...

Molecular Medicine

OCDE Subjects

Medical And Health Sc...

Quartile (Date Issued)
SQ
License
acceso abierto

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