Work place: Department of Computer Science and Engineering, Techno International New Town, Kolkata
E-mail: avijitmondal88@yahoo.com
Website:
Research Interests: Security Services, Network Security, Cloud Computing
Biography
Mr. Avijit Mondal is currently working as an Assistant Professor in the Computer Science and Engineering department of Techno International New Town, Kolkata. He has Completed his B.Tech in Information Technology from CIEM Tollygunge (under WBUT) and Completed his M.Tech in Computer Science from BIT Mesra . He has submitted his PhD Thesis in Computer Science from Maulana Abul Kalam Azad University of Technology (MAKAUT) (Registration No: PhD/Tech/CSEIT056/2018). He has Total 14 years of experience. His-area of interest is Network Security, Cloud Security.
By Avijit Mondal Radha Tamal Goswami Soumita Sen
DOI: https://doi.org/10.5815/ijwmt.2023.06.03, Pub. Date: 8 Dec. 2023
The expansion of the Internet and shared networks aids to the growth of records generated by nodes connected to the Internet. With the development of network attack technology, all Internet hosts have become targets of attack. When dealing with new attacks (such as smart ongoing threats) in a complex network environment, existing security strategies are powerless. Compared to existing security detection techniques, honeypot systems (IoT research) can analyze network packets or log files being attacked, and automatically monitor potential attack. Researchers can use this data to accurately capture the tactics, strategies, and techniques of threat actors to create defense strategies. However, for general security researchers, the immediate topic is how to improve the honeypot mechanism that attackers do not recognize and quietly capture their actions. Honeypot technology can be used not only as a passive information system, but also to combat zero-day and future attacks. In response to the rapid development of honeypot recognition with machine-learning technology, this paper proposes a new model of machine learning based on a linear regression algorithm with application and network layer characteristics. As a result of the experiment, we found that the proposed model was 97% more accurate than other machine learning algorithms.
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