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Botnet Detection using Machine Learning Techniques- An Overview

Authors: I. Priyadarshini; Purvesh Bhatt; Gaurav Saini; Mansi Wani;

Botnet Detection using Machine Learning Techniques- An Overview

Abstract

{"references": ["Shinan, K., Alsubhi, K., Alzahrani, A., & Ashraf, M. U. (2021). Machine learning-based botnet detection in software-defined network: a systematic review. Symmetry, 13(5), 866..", "Bijalwan, A. (2020). Botnet forensic analysis using machine learning. Security and Communication Networks, 2020.", "Sankaran A., Murat, K., B.,Tharrshine. M., Yuvasree G.(2020). Botnet detection using machine learning. IRJET.7(7):5116- 5121.", "Krishna, K. V (2020). A Study on advanced Botnets Detection in various computing systems using Machine Learning Techniques.", "Haq, S., & Singh, Y. (2018, December). Botnet detection using machine learning. In 2018 Fifth International Conference on Parallel, Distributed and Grid Computing (PDGC) (pp. 240-245). IEEE..", "Bijalwan, A., Solanki, V. K., & Pilli, E. S. (2018). Botnet Forensic: Issues, Challenges and Good Practices. Netw. Protoc. Algorithms, 10(2), 28-51.", "Bansal, A., & Mahapatra, S. (2017, October). A comparative analysis of machine learning techniques for botnet detection. In Proceedings of the 10th International Conference on Security of Information and Networks (pp. 91-98).", "Miller, S., & Busby-Earle, C. (2016, December). The role of machine learning in botnet detection. In 2016 11th international conference for internet technology and secured transactions (icitst) (pp. 359-364). IEEE.", "Beigi, E. B., Jazi, H. H., Stakhanova, N., & Ghorbani, A. A. (2014, October). Towards effective feature selection in machine learning-based botnet detection approaches. In 2014 IEEE Conference on Communications and Network Security (pp. 247-255). IEEE.", "Barthakur, P., Dahal, M., & Ghose, M. K. (2012, October). A framework for P2P botnet detection using SVM. In 2012 international conference on cyber-enabled distributed computing and knowledge discovery (pp. 195- 200). sIEEE."]}

Many bot-based attacks have been recorded globally in recent years. To carry out their harmful actions, they mostly use infected devices and systems. Because of the frequency of these attacks, people are more aware of the need of bot detection in network security. Machine learning based botnet detection is a tool that can detect the presence of bots on a network. It does so by analyzing the data collected from a targeted machine. The data collected includes scenarios where the traffic was normal and the bots were present. Botnet detection is dangerous in a network because bots have an influence on a variety of domains, including cyber security, finance, health care, law enforcement, and more. Botnets are getting progressively composite and unsafe, and most existing rule-based and flow-based detection systems may not be capable of identifying bot activity efficiently and effectively. Botnet analysis is used to determine the type and nature of an attack. This can be done using a variety of machine learning algorithms. The system can help in educating people understand the importance of security and be used as a base for creating real time systems.

Keywords

Botnet, Classification Algorithm, Deep learning, Machine learning, Traffic analysis.

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