IEEE Access (Jan 2023)

The Age of Ransomware: A Survey on the Evolution, Taxonomy, and Research Directions

  • Salwa Razaulla,
  • Claude Fachkha,
  • Christine Markarian,
  • Amjad Gawanmeh,
  • Wathiq Mansoor,
  • Benjamin C. M. Fung,
  • Chadi Assi

DOI
https://doi.org/10.1109/ACCESS.2023.3268535
Journal volume & issue
Vol. 11
pp. 40698 – 40723

Abstract

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The proliferation of ransomware has become a significant threat to cybersecurity in recent years, causing significant financial, reputational, and operational damage to individuals and organizations. This paper aims to provide a comprehensive overview of the evolution of ransomware, its taxonomy, and its state-of-the-art research contributions. We begin by tracing the origins of ransomware and its evolution over time, highlighting the key milestones and major trends. Next, we propose a taxonomy of ransomware that categorizes different types of ransomware based on their characteristics and behavior. Subsequently, we review the existing research over several years in regard to detection, prevention, mitigation, and prediction techniques. Our extensive analysis, based on more than 150 references, has revealed that significant research, specifically 72.8%, has focused on detecting ransomware. However, a lack of emphasis has been placed on predicting ransomware. Additionally, of the studies focused on ransomware detection, a significant portion, 70%, have utilized Machine Learning methods. This study uncovers a range of shortcomings in research pertaining to real-time protection and identifying zero-day ransomware, and two issues specific to Machine Learning models. Adversarial machine learning exploitation and concept drift have been identified as under-researched areas in the field. This survey is a constructive roadmap for researchers interested in ransomware research matters.

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