TY - JOUR
T1 - Graph Convolutional Neural Network Based Malware Detection in IoT-Cloud Environment
AU - Alsubaei, Faisal S.
AU - Alshahrani, Haya Mesfer
AU - Tarmissi, Khaled
AU - Motwakel, Abdelwahed
N1 - Publisher Copyright:
© 2023, Tech Science Press. All rights reserved.
PY - 2023
Y1 - 2023
N2 - Cybersecurity has become the most significant research area in the domain of the Internet of Things (IoT) owing to the ever-increasing number of cyberattacks. The rapid penetration of Android platforms in mobile devices has made the detection of malware attacks a challenging process. Furthermore, Android malware is increasing on a daily basis. So, precise malware detection analytical techniques need a large number of hardware resources that are signifi-cantly resource-limited for mobile devices. In this research article, an optimal Graph Convolutional Neural Network-based Malware Detection and classification (OGCNN-MDC) model is introduced for an IoT-cloud environment. The proposed OGCNN-MDC model aims to recognize and categorize malware occur-rences in IoT-enabled cloud platforms. The presented OGCNN-MDC model has three stages in total, such as data pre-processing, malware detection and parameter tuning. To detect and classify the malware, the GCNN model is exploited in this work. In order to enhance the overall efficiency of the GCNN model, the Group Mean-based Optimizer (GMBO) algorithm is utilized to appropriately adjust the GCNN parameters, and this phenomenon shows the novelty of the cur-rent study. A widespread experimental analysis was conducted to establish the superiority of the proposed OGCNN-MDC model. A comprehensive comparison study was conducted, and the outcomes highlighted the supreme performance of the proposed OGCNN-MDC model over other recent approaches.
AB - Cybersecurity has become the most significant research area in the domain of the Internet of Things (IoT) owing to the ever-increasing number of cyberattacks. The rapid penetration of Android platforms in mobile devices has made the detection of malware attacks a challenging process. Furthermore, Android malware is increasing on a daily basis. So, precise malware detection analytical techniques need a large number of hardware resources that are signifi-cantly resource-limited for mobile devices. In this research article, an optimal Graph Convolutional Neural Network-based Malware Detection and classification (OGCNN-MDC) model is introduced for an IoT-cloud environment. The proposed OGCNN-MDC model aims to recognize and categorize malware occur-rences in IoT-enabled cloud platforms. The presented OGCNN-MDC model has three stages in total, such as data pre-processing, malware detection and parameter tuning. To detect and classify the malware, the GCNN model is exploited in this work. In order to enhance the overall efficiency of the GCNN model, the Group Mean-based Optimizer (GMBO) algorithm is utilized to appropriately adjust the GCNN parameters, and this phenomenon shows the novelty of the cur-rent study. A widespread experimental analysis was conducted to establish the superiority of the proposed OGCNN-MDC model. A comprehensive comparison study was conducted, and the outcomes highlighted the supreme performance of the proposed OGCNN-MDC model over other recent approaches.
KW - cloud
KW - Cybersecurity
KW - graph convolution network
KW - IoT
KW - malware detection
UR - http://www.scopus.com/inward/record.url?scp=85150808156&partnerID=8YFLogxK
U2 - 10.32604/iasc.2023.034907
DO - 10.32604/iasc.2023.034907
M3 - Article
AN - SCOPUS:85150808156
SN - 1079-8587
VL - 36
SP - 2897
EP - 2914
JO - Intelligent Automation and Soft Computing
JF - Intelligent Automation and Soft Computing
IS - 3
ER -