Visible to the public Network Anomaly Detection with Stochastically Improved Autoencoder Based Models

TitleNetwork Anomaly Detection with Stochastically Improved Autoencoder Based Models
Publication TypeConference Paper
Year of Publication2017
AuthorsAygun, R. C., Yavuz, A. G.
Conference Name2017 IEEE 4th International Conference on Cyber Security and Cloud Computing (CSCloud)
Date Publishedjun
Keywordsanomaly detection, anomaly detection models, autoencoder, Computational modeling, Data models, Deep Learning, denoising autoencoder, Intrusion detection, Intrusion Detection Systems, KDDTest+ dataset, learning (artificial intelligence), network anomaly detection, Network security, noise reduction, pubcrawl, resilience, Resiliency, Scalability, security, security of data, singular anomaly detection methods, stochastic approach, Stochastic computing, Stochastic Computing Security, Stochastic processes, stochastically improved autoencoder, Training, two deep learning, Zero day attacks
Abstract

Intrusion detection systems do not perform well when it comes to detecting zero-day attacks, therefore improving their performance in that regard is an active research topic. In this study, to detect zero-day attacks with high accuracy, we proposed two deep learning based anomaly detection models using autoencoder and denoising autoencoder respectively. The key factor that directly affects the accuracy of the proposed models is the threshold value which was determined using a stochastic approach rather than the approaches available in the current literature. The proposed models were tested using the KDDTest+ dataset contained in NSL-KDD, and we achieved an accuracy of 88.28% and 88.65% respectively. The obtained results show that, as a singular model, our proposed anomaly detection models outperform any other singular anomaly detection methods and they perform almost the same as the newly suggested hybrid anomaly detection models.

URLhttps://ieeexplore.ieee.org/document/7987197/
DOI10.1109/CSCloud.2017.39
Citation Keyaygun_network_2017