TY - JOUR
T1 - A Paradigm for Modeling Infectious Diseases :
T2 - Assessing Malware Spread in Early-Stage Outbreaks
AU - Ginters, Egils
AU - Dumpis, Uga
AU - Calvet Liñan, Laura
AU - Piera, Miquel Àngel
AU - Nazemi, Kawa
AU - Matvejevs, Andrejs
AU - Ruíz Estrada, Mario Arturo
N1 - Publisher Copyright:
© 2024 by the authors.
PY - 2024/12/29
Y1 - 2024/12/29
N2 - As digitalization and artificial intelligence advance, cybersecurity threats intensify, making malware-a type of software installed without authorization to harm users-an increasingly urgent concern. Due to malware's social and economic impacts, accurately modeling its spread has become essential. While diverse models exist for malware propagation, their selection tends to be intuitive, often overlooking the unique aspects of digital environments. Key model choices include deterministic vs. stochastic, planar vs. spatial, analytical vs. simulation-based, and compartment-based vs. individual state-tracking models. In this context, our study assesses fundamental infection spread models to determine those most applicable to malware propagation. It is organized in two parts: the first examines principles of deterministic and stochastic infection models, and the second provides a comparative analysis to evaluate model suitability. Key criteria include scalability, robustness, complexity, workload, transparency, and manageability. Using consistent initial conditions, control examples are analyzed through Python-based numerical methods and agent-based simulations in NetLogo. The findings yield practical insights and recommendations, offering valuable guidance for researchers and cybersecurity professionals in applying epidemiological models to malware spread.
AB - As digitalization and artificial intelligence advance, cybersecurity threats intensify, making malware-a type of software installed without authorization to harm users-an increasingly urgent concern. Due to malware's social and economic impacts, accurately modeling its spread has become essential. While diverse models exist for malware propagation, their selection tends to be intuitive, often overlooking the unique aspects of digital environments. Key model choices include deterministic vs. stochastic, planar vs. spatial, analytical vs. simulation-based, and compartment-based vs. individual state-tracking models. In this context, our study assesses fundamental infection spread models to determine those most applicable to malware propagation. It is organized in two parts: the first examines principles of deterministic and stochastic infection models, and the second provides a comparative analysis to evaluate model suitability. Key criteria include scalability, robustness, complexity, workload, transparency, and manageability. Using consistent initial conditions, control examples are analyzed through Python-based numerical methods and agent-based simulations in NetLogo. The findings yield practical insights and recommendations, offering valuable guidance for researchers and cybersecurity professionals in applying epidemiological models to malware spread.
KW - epidemiological models
KW - malware spread modeling
KW - mathematical modeling
KW - simulation
KW - sociotechnical systems
UR - http://www.scopus.com/inward/record.url?scp=85214464507&partnerID=8YFLogxK
UR - https://www.mendeley.com/catalogue/d7fd69b2-5de9-384d-ae75-3a88ff704ad4/
U2 - 10.3390/math13010091
DO - 10.3390/math13010091
M3 - Article
SN - 2227-7390
VL - 13
JO - Mathematics
JF - Mathematics
IS - 1
M1 - 91
ER -