Title of article
Ransomware Modeling Based on a Process Mining Approach
Author/Authors
Aghamohammadpour, Ali Department of Computer Engineering - Science and Research Branch - Islamic Azad University, Tehran, Iran , Mahdipour, Ebrahim Department of Computer Engineering - Science and Research Branch - Islamic Azad University, Tehran, Iran , Attarzadeh, Iman Department of Computer Engineering - Faculty of Engineering - Central Tehran Branch - Islamic Azad University, Tehran, Iran
Pages
10
From page
27
To page
36
Abstract
Ransomware attacks are taking advantage of the ongoing coronavirus pandemics and attacking the
vulnerable systems in the health sector. Modeling ransomware attacks help to identify and simulate attacks against security environments, using likely adversary techniques. Process Mining (PM) is a field of study that focuses on analyzing process logs linked with the execution of the processes of a system to acquire insight into the variety of characteristics of how the functions behave. This paper presents a PM conformance-based approach to determining
ransomware processes. First, frequent ransomware techniques were identified using state-of-the-art MITRE ATT&CK.
Then, a model was developed to gather ransomware techniques using a process-based approach. The PM-based Prom
tool is used to check the conformance of malware processes alongside the presented model to illustrate its efficiency.
The model can identify chain processes associated with ransom-related behaviors. In this study, the presented model
was evaluated using thirty common malwares in the healthcare industry. The approach demonstrates that this model could successfully classify ninety percent of malware instances as ransomware and non-ransomware. Finally, guidelines for future research are provided. We believe the proposed method will uncover behavioral models that will enable us to hunt ransomware threats.
Keywords
Process Mining , Ransomware Hunting , Threat Modeling , Threat Intelligence , Threat Hunting
Journal title
International Journal of Information and Communication Technology Research
Serial Year
2022
Record number
2731088
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