International Journal of Management and Applied Science (IJMAS)
.
Follow Us On :
current issues
Volume-10,Issue-1  ( Jan, 2024 )
Past issues
  1. Volume-10,Issue-1  ( Jan, 2024 )
  2. Volume-9,Issue-12  ( Dec, 2023 )
  3. Volume-9,Issue-11  ( Nov, 2023 )
  4. Volume-9,Issue-10  ( Oct, 2023 )
  5. Volume-9,Issue-9  ( Sep, 2023 )
  6. Volume-9,Issue-8  ( Aug, 2023 )
  7. Volume-9,Issue-7  ( Jul, 2023 )
  8. Volume-9,Issue-6  ( Jun, 2023 )
  9. Volume-9,Issue-5  ( May, 2023 )
  10. Volume-9,Issue-4  ( Apr, 2023 )

Statistics report
May. 2024
Submitted Papers : 80
Accepted Papers : 10
Rejected Papers : 70
Acc. Perc : 12%
Issue Published : 119
Paper Published : 5065
No. of Authors : 10504
  Journal Paper


Paper Title :
Effective Analysis of Cyber-Attack Prevention Using Machine Learning Techniques in Retailing

Author :Kamran Razzaq, Mahmood Shah

Article Citation :Kamran Razzaq ,Mahmood Shah , (2023 ) " Effective Analysis of Cyber-Attack Prevention Using Machine Learning Techniques in Retailing " , International Journal of Management and Applied Science (IJMAS) , pp. 26-28, Volume-9,Issue-7

Abstract : The development of the internet has transformed the way of traditional shopping into online and has established a need for protection of online retailing due to incessant malicious cyber-attacks. This study investigates cyber-attack prevention practices of online retailing in the context of the developing world. It explores the foundation for advanced machine-learning research in protecting online retailers and how it will effectively designa framework for developing countries. The qualitative case study design with a semi-structured data collection mechanism, i.e., face-to-face interviews and company documents, can be used. Various data collection procedures using purposive sampling are emphasized, like interviews with authorized cyber security officials within the online retail sector of the majority world. The study will empirically investigate the effects of machine-learning-based techniques for cyber-attack prevention in an online retail setting. Keywords - Cyber-Attacks, Cyber-Threats, Retailers, Machine-Learning, Cyber-Attack Prevention

Type : Research paper

Published : Volume-9,Issue-7


DOIONLINE NO - IJMAS-IRAJ-DOIONLINE-20054   View Here

Copyright: © Institute of Research and Journals

| PDF |
Viewed - 20
| Published on 2023-11-16
   
   
IRAJ Other Journals
IJMAS updates
IJMAS -THANK YOU ALL FOR CONTRIBUTING YOUR PAPER TO IJMAS MAY ISSUE. ALL AUTHORS ARE REQUESTED TO GET THEIR HARD COPY NOW.
The Conference World
Facebook

JOURNAL SUPPORTED BY