Comprehensive Method of Botnet Detection Using Machine Learning

Author:

Kumar Kapil1

Affiliation:

1. NSUT East Campus, New Delhi, India

Abstract

The botnet interrupts network devices and keeps control of the connections with the command, which controls the programmer, and the programmer controls the malicious code injected in the machine for obtaining information about the machines. The attacker uses a botnet to commence dangerous attacks as DDoS, phishing, despoil of information, and spamming. The botnet establishes with a large network and several hosts belong to it. In the paper, the authors proposed the framework of botnet detection by using an Artificial Neural Network. The author research upgrading the extant system by comprising of cache memory to fast the process. Finally, for detection, the author used an analytical approach, which is known as an artificial neural network that contains three layers: the input layer, hidden layer, output layer, and all layers are connected to correlate and approximate the results. The experiment result determines that the classifier with 25 epochs gives optimal accuracy is 99.78 percent and shows the detection rate is 99.7 percent.

Publisher

IGI Global

Subject

Software

Reference53 articles.

1. Big data analysis and distributed deep learning for next-generation botnet detection system optimization;K.Al Jelled;Journal of Big Data,2019

2. Evaluation of machine learning algorithms for botnet detection system;M.Almeida;15th International Symposium on Intelligent Systems and Informatics (SISY),2017)

3. Evaluation of the Capabilities of WireShark as a tool for Intrusion Detection

4. Deep neural networks in cyber-attack detection systems;I. M.Bapiyev;International Journal of Civil Engineering and Technology,2017

5. Artificial neural networks: fundamentals, computing, design, and application

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