Performance Evaluation of a Combined Anomaly Detection Platform

Research output: Contribution to journalArticleScientificpeer-review

Researchers

Research units

  • Nokia Bell Labs
  • Xidian University

Abstract

Hybrid Anomaly Detection Model (HADM) is a platform that filters network traffic and identifies malicious activities on the network. The platform applies data mining techniques to tackle effectively the security issues in high load communication networks. The platform uses a combination of linear and learning algorithms combined with protocol analyzer. The linear algorithms filter and extract distinctive attributes and features of the cyber-attacks while the learning algorithms use these attributes and features to identify new types of cyber-attacks. The protocol analyzer in this platform classifies and filters vulnerable protocols to avoid unnecessary computation load. The use of linear algorithms in conjunction with learning algorithms and protocol analyzer allows the HADM to achieve improved efficiency in terms of accuracy and computation time to detect cyber-attacks over existing solutions. While authors’ previous paper evaluated HADM efficiency (accuracy and computation time) against related studies, this paper, concentrates on HADM robustness and scalability. For this purpose, five datasets, including ISCX-2012, UNSW-NB15 Jan, UNSW-NB15 Feb, ISCX-2017, and MAWILab-2018, with various size and diverse attacks have been used. Different feature selection methods are applied to find the best features. The feature selection methods are selected based on the algorithms’ computation time and detection rate. The best algorithms are then selected through a benchmark on applied datasets and based on the metrics such as cross-entropy loss, precision, recall, and computation time. The result of HADM platform shows robustness and scalability against datasets with different size and diverse attacks.

Details

Original languageEnglish
Pages (from-to)100964-100978
Number of pages15
JournalIEEE Access
Volume7
Issue number 2169-3536
Publication statusPublished - 24 Jul 2019
MoE publication typeA1 Journal article-refereed

    Research areas

  • Anomaly Detection, Data Mining, feature selection, machine learning, security

Download statistics

No data available

ID: 36169359