Enhancing Ransomware Detection and Response Using Artificial Intelligence Algorithms
Description
ABSTRACT
Ransomware has evolved from opportunistic malware into a mature criminal business model that
blends rapid encryption, lateral movement, and data extortion. Traditional signature-based and
rule-driven defenses struggle to keep pace with fast-changing ransomware variants, adversarial
evasion, and the operational complexity of modern digital environments. This paper proposes an
artificial intelligence (AI)–driven approach to enhance ransomware detection and response by
integrating behavior-based analytics, anomaly detection, supervised classification, and decisionsupport automation within a governance-aligned incident response workflow. Building on the
broader role of AI in cybersecurity defense mechanisms, the study develops a conceptual
framework that links technical detection and response capabilities to national cybersecurity
strategy principles, critical infrastructure protection priorities, and organizational culture
readiness. The proposed architecture emphasizes continuous learning, context-aware risk
scoring, and response orchestration designed to reduce time-to-detect and time-to-contain while
maintaining policy compliance and operational resilience. The paper concludes with an
evaluation blueprint using defensible metrics and a strategic alignment checklist to support realworld deployment.
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Enhancing Ransomware Detection and Response Using Artificial Intelligence Algorithms.pdf
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Additional details
Additional titles
- Subtitle (English)
- Enhancing Ransomware Detection and Response Using Artificial Intelligence Algorithms
Funding
- Dutch Research Council
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