CRCYLGJan 26, 2023

Minerva: A File-Based Ransomware Detector

arXiv:2301.11050v414 citationsh-index: 40
Originality Incremental advance
AI Analysis

This addresses the critical issue of ransomware attacks causing billions in damages, offering a more resilient solution for cybersecurity, though it appears incremental as it builds on existing behavioral detection methods.

The paper tackles the problem of ransomware detection by proposing Minerva, a robust behavioral-based approach designed to resist evasion attacks, achieving over 99% detection accuracy within 0.52 seconds of activity.

Ransomware attacks have caused billions of dollars in damages in recent years, and are expected to cause billions more in the future. Consequently, significant effort has been devoted to ransomware detection and mitigation. Behavioral-based ransomware detection approaches have garnered considerable attention recently. These behavioral detectors typically rely on process-based behavioral profiles to identify malicious behaviors. However, with an increasing body of literature highlighting the vulnerability of such approaches to evasion attacks, a comprehensive solution to the ransomware problem remains elusive. This paper presents Minerva, a novel, robust approach to ransomware detection. Minerva is engineered to be robust by design against evasion attacks, with architectural and feature selection choices informed by their resilience to adversarial manipulation. We conduct a comprehensive analysis of Minerva across a diverse spectrum of ransomware types, encompassing unseen ransomware as well as variants designed specifically to evade Minerva. Our evaluation showcases the ability of Minerva to accurately identify ransomware, generalize to unseen threats, and withstand evasion attacks. Furthermore, over 99% of detected ransomware are identified within 0.52sec of activity, enabling the adoption of data loss prevention techniques with near-zero overhead.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes