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Ransomware Detection and Classification Strategies

Aldin Vehabovic, Nasir Ghani, Elias Bou‐Harb, Jorge Crichigno, Ayşegül Yayımlı

202232 citationsDOIOpen Access PDF

Abstract

Ransomware uses encryption methods to make data inaccessible to legitimate users. To date a wide range of ransomware families have been developed and deployed, causing immense damage to governments, corporations, and private users. As these cyberthreats multiply, researchers have proposed a range of ransom ware detection and classification schemes. Most of these methods use advanced machine learning techniques to process and analyze real-world ransomware binaries and action sequences. Hence this paper presents a survey of this critical space and classifies existing solutions into several categories, i.e., including network-based, host-based, forensic characterization, and authorship attribution. Key facilities and tools for ransomware analysis are also presented along with open challenges.

Topics & Concepts

RansomwareComputer scienceArtificial intelligenceMalwareComputer securityAdvanced Malware Detection TechniquesSpam and Phishing DetectionNetwork Security and Intrusion Detection