Botnet Detection in IoT Devices Using Random Forest Classifier with Independent Component Analysis

Author:

Akash Nazmus Sakib1,Rouf Shakir2,Jahan Sigma3,Chowdhury Amlan2,Uddin Jia4

Affiliation:

1. Department of Computing & Information System, Daffodil International University, Bangladesh

2. Department of Computer Science & Engineering, BRAC University, Bangladesh

3. Faculty of Computer Science, Dalhousie University, Canada

4. AI and Big Data Department, Endicott College, Woosong University, South Korea

Abstract

With rapid technological progress in the Internet of Things (IoT), it has become imperative to concentrate on its security aspect. This paper represents a model that accounts for the detection of botnets through the use of machine learning algorithms. The model examined anomalies, commonly referred to as botnets, in a cluster of IoT devices attempting to connect to a network. Essentially, this paper exhibited the use of transport layer data (User Datagram Protocol - UDP) generated through IoT devices. An intelligent novel model comprising Random Forest Classifier with Independent Component Analysis (ICA) was proposed for botnet detection in IoT devices. Various machine learning algorithms were also implemented upon the processed data for comparative analysis. The experimental results of the proposed model generated state-of-the-art results for three different datasets, achieving up to 99.99% accuracy effectively with the lowest prediction time of 0.12 seconds without overfitting. The significance of this study lies in detecting botnets in IoT devices effectively and efficiently under all circumstances by utilizing ICA with Random Forest Classifier, which is a simple machine learning algorithm.

Publisher

UUM Press, Universiti Utara Malaysia

Subject

General Mathematics,General Computer Science

Cited by 9 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Enhanced botnet detection in IoT networks using zebra optimization and dual-channel GAN classification;Scientific Reports;2024-07-26

2. An Effective Classification of DDoS Attacks in a Distributed Network by Adopting Hierarchical Machine Learning and Hyperparameters Optimization Techniques;IEEE Access;2024

3. Tackling Okiru Attacks in IoT with AI-Driven Detection and Mitigation Strategies;2023 International Conference on Power Energy, Environment & Intelligent Control (PEEIC);2023-12-19

4. Transfer learning-based Mirai botnet detection in IoT networks;2023 International Conference on Innovations in Intelligent Systems and Applications (INISTA);2023-09-20

5. Binary and Multi-Class Classification on the IoT-23 Dataset;2023 Advances in Science and Engineering Technology International Conferences (ASET);2023-02-20

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