Anthony LaRocque

and 5 more

The prevalence of sophisticated ransomware attacks targeting critical infrastructure, financial systems, and government networks demands detection methodologies capable of adapting to an evolving threat landscape. Autonomous Patternbased Signature Extraction (APSE), a novel ransomware detection framework, introduces an innovative approach to threat detection through autonomous signature generation and multi-level pattern recognition, advancing beyond conventional signature and heuristic-based techniques. APSE operates independently, leveraging unsupervised learning algorithms to analyze and classify ransomware behavior in real-time, generating dynamic and highly specific signatures without reliance on manual updates. Through extensive evaluation, APSE demonstrated high accuracy in detecting known and zero-day ransomware variants, outperforming traditional methods by effectively minimizing false positives and false negatives. Efficiency testing further revealed APSE's ability to operate within resource-constrained environments, optimizing memory and processing requirements without compromising detection rates. The system's modular design enhances scalability across diverse network architectures, making it suitable for integration within large-scale, automated cybersecurity infrastructures. By advancing the field of autonomous threat detection, APSE establishes a new standard in proactive ransomware mitigation, promising heightened resilience and security across critical domains vulnerable to ransomware attacks.