Title | An Approach for P2P Based Botnet Detection Using Machine Learning |
Publication Type | Conference Paper |
Year of Publication | 2022 |
Authors | Tikekar, Priyanka C., Sherekar, Swati S., Thakre, Vilas M. |
Conference Name | 2022 Third International Conference on Intelligent Computing Instrumentation and Control Technologies (ICICICT) |
Keywords | Analysis, Botnet, botnets security, composability, compositionality, detection techniques, Instruments, machine learning, Malware, Metrics, Network security, Performance analysis, pubcrawl, resilience, Resiliency, Support vector machines, Workstations |
Abstract | The internet has developed and transformed the world dramatically in recent years, which has resulted in several cyberattacks. Cybersecurity is one of society's most serious challenge, costing millions of dollars every year. The research presented here will look into this area, focusing on malware that can establish botnets, and in particular, detecting connections made by infected workstations connecting with the attacker's machine. In recent years, the frequency of network security incidents has risen dramatically. Botnets have previously been widely used by attackers to carry out a variety of malicious activities, such as compromising machines to monitor their activities by installing a keylogger or sniffing traffic, launching Distributed Denial of Service (DDOS) attacks, stealing the identity of the machine or credentials, and even exfiltrating data from the user's computer. Botnet detection is still a work in progress because no one approach exists that can detect a botnet's whole ecosystem. A detailed analysis of a botnet, discuss numerous parameter's result of detection methods related to botnet attacks, as well as existing work of botnet identification in field of machine learning are discuss here. This paper focuses on the comparative analysis of various classifier based on design of botnet detection technique which are able to detect P2P botnet using machine learning classifier. |
DOI | 10.1109/ICICICT54557.2022.9917847 |
Citation Key | tikekar_approach_2022 |