Title
Malicious Mining Code Detection Based On Ensemble Learning In Cloud Computing Environment
Abstract
Hackers increasingly tend to abuse and nefariously use cloud services by injecting malicious mining code. This malicious code can be spread through infrastructures in the cloud platforms and pose a great threat to users and enterprises. In this study, a method is proposed for detecting malicious mining code in the cloud platforms, which constructs a detection model by fusing the Bagging and Boosting algorithms. By randomly extracting samples and letting models vote together to decide, the variance of model detection can be reduced obviously. Compared with traditional classifiers, the proposed method can obtain higher accuracy and better robustness. The experimental results show that, for the given dataset, the values of AUC and F1-score can reach 0.992 and 0.987 respectively, and the standard deviation of AUC values under different data inputs is only 0.0009.
Year
DOI
Venue
2021
10.1016/j.simpat.2021.102391
SIMULATION MODELLING PRACTICE AND THEORY
Keywords
DocType
Volume
Malicious mining code, Mining virus, Cloud computing, Static analysis, Ensemble learning
Journal
113
ISSN
Citations 
PageRank 
1569-190X
6
0.46
References 
Authors
0
6
Name
Order
Citations
PageRank
Shudong Li14712.98
Hao Li22511.35
WeiHong Han36416.26
X. Du42320241.73
Mohsen Guizani56456557.44
Zhi-Hong Tian631252.75