Visible to the public Experimental Evaluation of a Multi-Layer Feed-Forward Artificial Neural Network Classifier for Network Intrusion Detection System

TitleExperimental Evaluation of a Multi-Layer Feed-Forward Artificial Neural Network Classifier for Network Intrusion Detection System
Publication TypeConference Paper
Year of Publication2017
AuthorsAl-Zewairi, M., Almajali, S., Awajan, A.
Conference Name2017 International Conference on New Trends in Computing Sciences (ICTCS)
Date Publishedoct
ISBN Number 978-1-5386-0527-1
KeywordsArtificial neural networks, Big Data, complex features, conventional machine-learning algorithms, Deep Learning, deep learning binomial classifier, feedforward neural nets, H2O, Intrusion detection, intrusion detection system, learning (artificial intelligence), Measurement, Metrics, multilayer feed-forward artificial neural Network, network intrusion detection system, Network security, Neural networks, pattern classification, policy-based governance, pubcrawl, resilience, Resiliency, security of data, Testing, Training, unseen data, UNSW-NB15, UNSW-NB15 dataset, water
Abstract

Deep Learning has been proven more effective than conventional machine-learning algorithms in solving classification problem with high dimensionality and complex features, especially when trained with big data. In this paper, a deep learning binomial classifier for Network Intrusion Detection System is proposed and experimentally evaluated using the UNSW-NB15 dataset. Three different experiments were executed in order to determine the optimal activation function, then to select the most important features and finally to test the proposed model on unseen data. The evaluation results demonstrate that the proposed classifier outperforms other models in the literature with 98.99% accuracy and 0.56% false alarm rate on unseen data.

URLhttp://ieeexplore.ieee.org/document/8250283/
DOI10.1109/ICTCS.2017.29
Citation Keyal-zewairi_experimental_2017