سیویلیکا را در شبکه های اجتماعی دنبال نمایید.

Enhancing Network Intrusion Detection Systems Using Unsupervised Deep Learning Approaches with Autoencoders for Anomaly Detection

Publish Year: 1402
Type: Conference paper
Language: English
View: 322

This Paper With 10 Page And PDF Format Ready To Download

این Paper در بخشهای موضوعی زیر دسته بندی شده است:

Export:

Link to this Paper:

Document National Code:

CSCG05_161

Index date: 28 April 2024

Enhancing Network Intrusion Detection Systems Using Unsupervised Deep Learning Approaches with Autoencoders for Anomaly Detection abstract

This paper delves into examining the utilization of autoencoders in unsupervised deep learning techniques applied to Network-Based Anomaly Intrusion Detection Systems (IDS). Given the inadequacy of anomaly-base traditional IDSs in detecting zero-day attacks, enhancing their performance in that aspect remains an active research pursuit. This study conducts a comprehensive review of two Denoising Autoencoder (DAE) and sparse autoencoder approaches for identifying novel attacks. The models utilizing AE aim to generate distinctive features conducive to detecting network intrusions. By considering either the number of citations or the significance of emerging methods, relevant works were identified, thoroughly examined, and summarized. The cybersecurity datasets employed in this investigation are publicly accessible and widely recognized. Furthermore, the primary focus of this study is on various autoencoder methodologies within self-taught learning, serving as an automated means for feature acquisition.

Enhancing Network Intrusion Detection Systems Using Unsupervised Deep Learning Approaches with Autoencoders for Anomaly Detection Keywords:

Intrusion Detection Systems (IDS) , Auto Encoder , NIDS , Deep Learning , Network Traffic Analysis , Cyber Security

Enhancing Network Intrusion Detection Systems Using Unsupervised Deep Learning Approaches with Autoencoders for Anomaly Detection authors

Homa Taherpour Gelsefid

Bachelor Student in Computer Engineering, Faculty of Technology and Engineering, East of Guilan, University ofGuilan, Guilan, Iran

Seyyed Abdorreza Hesam Mohseni

University Lecturer of Computer Engineering, Faculty of Technology and Engineering, East of Guilan, University ofGuilan, Guilan, Iran