Detecting ransomware attacks using intelligent algorithms: recent development and next direction from deep learning and big data perspectives

被引:0
作者
Ibrahim Bello
Haruna Chiroma
Usman A. Abdullahi
Abdulsalam Ya’u Gital
Fatsuma Jauro
Abdullah Khan
Julius O. Okesola
Shafi’i M. Abdulhamid
机构
[1] Abubakar Tafawa Balewa University,Department of Mathematical Sciences
[2] National Yunlin University of Science and Technology,Future Technlogy Research Center
[3] Ahmadu Bello University,Department of Computer Science
[4] King AbdulAziz University,Faculty of Computing and Information Technology, Information System Department
[5] University of Agriculture Peshawar,Institute of Computer Sciences and Information Technology
[6] First Technical University,Department of Computer Science
[7] Community College Qatar,Department of Cyber Security and Information Technology
来源
Journal of Ambient Intelligence and Humanized Computing | 2021年 / 12卷
关键词
Big data analytics; Decision tree; Deep learning; Machine learning algorithms; Random forest; Ransomware;
D O I
暂无
中图分类号
学科分类号
摘要
Recently, cybercriminals have infiltrated different sectors of the human venture to launch ransomware attacks against information technology infrastructure. They demand ransom from individuals and industries, thereby inflicting significant loss of data. The use of intelligent algorithms for ransomware attack detection began to gain popularity in recent times and proved feasible. However, no comprehensive dedicated literature review on the applications of intelligent machine learning algorithms to detect ransomware attacks on information technology infrastructure. Unlike the previous reviews on ransomware attacks, this paper aims to conduct a comprehensive survey on the detection of ransomware attacks using intelligent machine learning algorithms. The study analysed literature from different perspectives focusing on intelligent algorithms detection of ransomware. The survey shows that there is a growing interest in recent times (2016—date) on the application of intelligent algorithms for ransomware detection. Deep learning algorithms are gaining tremendous attention because of their ability to handle large scale datasets, prominence in the research community, and ability to solve problems better than the conventional intelligent algorithms. To date, the potentials of big data analytics are yet to be fully exploited for the smart detection of ransomware attacks. Future research opportunities from the perspective of deep learning and big data analytics to solve the challenges identified from the survey are outlined to give the research community a new direction in dealing with ransomware attacks.
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页码:8699 / 8717
页数:18
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