A Multilabel Fuzzy Relevance Clustering System for Malware Attack Attribution in the Edge Layer of Cyber-Physical Networks

Author:

Alaeiyan Mohammadhadi1,Dehghantanha Ali2,Dargahi Tooska3,Conti Mauro4,Parsa Saeed1

Affiliation:

1. School of Computer Engineering, Iran University of Science and Technology, Narmak, Tehran, Tehran, Iran

2. University of Guelph, Guelph, Ontario,Canada

3. University of Salford, The Crescent, Salford, Greater Manchester, UK

4. Department of Mathematics, University of Padua, Padua, Italy

Abstract

The rapid increase in the number of malicious programs has made malware forensics a daunting task and caused users’ systems to become in danger. Timely identification of malware characteristics including its origin and the malware sample family would significantly limit the potential damage of malware. This is a more profound risk in Cyber-Physical Systems (CPSs), where a malware attack may cause significant physical damage to the infrastructure. Due to limited on-device available memory and processing power in CPS devices, most of the efforts for protecting CPS networks are focused on the edge layer, where the majority of security mechanisms are deployed. Since the majority of advanced and sophisticated malware programs are combining features from different families, these malicious programs are not similar enough to any existing malware family and easily evade binary classifier detection. Therefore, in this article, we propose a novel multilabel fuzzy clustering system for malware attack attribution. Our system is deployed on the edge layer to provide insight into applicable malware threats to the CPS network. We leverage static analysis by utilizing Opcode frequencies as the feature space to classify malware families. We observed that a multilabel classifier does not classify a part of samples. We named this problem the instance coverage problem. To overcome this problem, we developed an ensemble-based multilabel fuzzy classification method to suggest the relevance of a malware instance to the stricken families. This classifier identified samples of VirusShare, RansomwareTracker, and BIG2015 with an accuracy of 94.66%, 94.26%, and 97.56%, respectively.

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Control and Optimization,Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

Reference37 articles.

1. Abuse.ch. [n.d.]. Ransomware Tracker. Retrieved from https://ransomwaretracker.abuse.ch/. Abuse.ch. [n.d.]. Ransomware Tracker. Retrieved from https://ransomwaretracker.abuse.ch/.

2. A.S.L. [n.d.]. Exeinfo PE. Retrieved from http://exeinfo.atwebpages.com. A.S.L. [n.d.]. Exeinfo PE. Retrieved from http://exeinfo.atwebpages.com.

3. Robust Malware Detection for Internet of (Battlefield) Things Devices Using Deep Eigenspace Learning

4. Detecting crypto-ransomware in IoT networks based on energy consumption footprint

5. Internet of Things security and forensics: Challenges and opportunities

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