Deep learning for network anomalies detection

Research output: Chapter in Book / Conference PaperConference Paperpeer-review

20 Citations (Scopus)

Abstract

![CDATA[Intrusion Detection Systems (IDS) provide substantial measures to protect networks assets. IDSs are software /hardware systems dedicated to exposing network threats. Signature-based, and anomalies detection are conventional approaches applied for the detection. Signaturebased approach inspects the network traffic for a predefined threats signature pattern. This technique suffers limitations in detecting unprecedented attacks. The anomalies detection systems deploy methods to separate the normal and abnormal network traffics. These methods experience inaccurate results, e.g., high false-positives and true- negative alarms. Anomalies detection adopted various methods, for instance, statistical methods, rule-based, and machine learning algorithms. The neural network is one of the machine learning algorithms utilized in intrusion detection, unfortunately, with discouraging accuracy results. Recently, breakthroughs in the neural network were achieved by training deeper neural networks. The approach is known as Deep Learning (DL), it proofed success in several applications domains, e.g., objects and voice recognition. However, there is a limitation on applying deep learning in outliers detection specifically, in network anomalies detection. In this paper, we are revisiting network anomaly detection to explore the potentials of DL for network threats detection . In our study, we focus on unsupervised learning DL algorithms. The study proposes a semi-supervised detection framework based on Unsupervised DL algorithms. The research explores the opportunities and challenges of applying DL to detect anomalies, primarily, autoencoders as a non-probabilistic algorithm. We provide an in-depth-analysis for AE for anomalies detection. Our results show the USDL would enhance detection with accuracy over 99%.]]
Original languageEnglish
Title of host publicationProceedings of 2018 International Conference on Machine Learning and Data Engineering (iCMLDE 2018), 3-7 December 2018, Sydney, Australia
PublisherIEEE
Pages149-153
Number of pages5
ISBN (Print)9781728104041
DOIs
Publication statusPublished - 2019
EventInternational Conference on Machine Learning and Data Engineering -
Duration: 3 Dec 2018 → …

Conference

ConferenceInternational Conference on Machine Learning and Data Engineering
Period3/12/18 → …

Keywords

  • anomaly detection (computer security)
  • computer networks
  • machine learning

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