Network Intrusion Detection Using Autoencode Neural Network

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Zakiya Manzoor Khan, Harjit Singh

Abstract

In today's interconnected digital landscape, safeguarding computer networks against unauthorized access and cyber threats is of paramount importance. NIDS play a crucial role in identifying and mitigating potential security breaches. This research paper explores the application of autoencoder neural networks, a subset of deep learning techniques, in the realm of Network Intrusion Detection.Autoencoder neural networks are known for their ability to learn and represent data in a compressed, low-dimensional form. This study investigates their potential in modeling network traffic patterns and identifying anomalous activities. By training autoencoder networks on both normal and malicious network traffic data, we aim to create effective intrusion detection models that can distinguish between benign and malicious network behavior.The paper provides an in-depth analysis of the architecture and training methodologies of autoencoder neural networks for intrusion detection. It also explores various data preprocessing techniques and feature engineering approaches to enhance the model's performance. Additionally, the research evaluates the robustness and scalability of autoencoder-based NIDS in real-world network environments. Furthermore, ethical considerations in network intrusion detection, including privacy concerns and false positive rates, are discussed. It addresses the need for a balanced approach that ensures network security while respecting user privacy and minimizing disruptions. operation. This approach compresses the majority samples & increases the minority sample count in tough samples so that the IDS can achieve greater classification accuracy.

Article Details

How to Cite
Zakiya Manzoor Khan, et al. (2023). Network Intrusion Detection Using Autoencode Neural Network. International Journal on Recent and Innovation Trends in Computing and Communication, 11(10), 1678–1688. https://doi.org/10.17762/ijritcc.v11i10.8739
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Articles
Author Biography

Zakiya Manzoor Khan, Harjit Singh

Zakiya Manzoor Khan1, Harjit Singh2

1Department of Computer Science and Engineering

Lovely Professional University

Phagwara, Jalandhar, Punjab

 zakiyamanzoorkhan@gmail.com

2Associate Professor and Assistant Dean– Department of Computer Science and Engineering

Lovely Professional University

Phagwara, Jalandhar, Punjab

harjit.14952@lpu.co.in