Please use this identifier to cite or link to this item: http://hdl.handle.net/20.500.11861/9011
Title: A novel network user behaviors and profile testing based on anomaly detection techniques
Authors: Tahir, Muhammad 
Li, Mingchu 
Zheng, Xiao 
Carie, Anil 
Jin, Xing 
Dr. AZHAR Muhammad 
Ayoub, Naeem 
Wagan, Atif 
Aamir, Muhammad 
Jamali, Liaquat Ali 
Imran, Muhammad Asif 
Hulio, Zahid Hussain 
Issue Date: 2019
Source: International Journal of Advanced Computer Science and Applications, 2019, vol. 10(6), pp. 305-324.
Journal: International Journal of Advanced Computer Science and Applications 
Abstract: The proliferation of smart devices and computer networks has led to a huge rise in internet traffic and network attacks that necessitate efficient network traffic monitoring. There have been many attempts to address these issues; however, agile detecting solutions are needed. This research work deals with the problem of malware infections or detection is one of the most challenging tasks in modern computer security. In recent years, anomaly detection has been the first detection approach followed by results from other classifiers. Anomaly detection methods are typically designed to new model normal user behaviors and then seek for deviations from this model. However, anomaly detection techniques may suffer from a variety of problems, including missing validations for verification and a large number of false positives. This work proposes and describes a new profile-based method for identifying anomalous changes in network user behaviors. Profiles describe user behaviors from different perspectives using different flags. Each profile is composed of information about what the user has done over a period of time. The symptoms extracted in the profile cover a wide range of user actions and try to analyze different actions. Compared to other symptom anomaly detectors, the profiles offer a higher level of user experience. It is assumed that it is possible to look for anomalies using high-level symptoms while producing less false positives while effectively finding real attacks. Also, the problem of obtaining truly tagged data for training anomaly detection algorithms has been addressed in this work. It has been designed and created datasets that contain real normal user actions while the user is infected with real malware. These datasets were used to train and evaluate anomaly detection algorithms. Among the investigated algorithms for example, local outlier factor (LOF) and one class support vector machine (SVM). The results show that the proposed anomaly-based and profile-based algorithm causes very few false positives and relatively high true positive detection. The two main contributions of this work are a new approaches based on network anomaly detection and datasets containing a combination of genuine malware and actual user traffic. Finally, the future directions will focus on applying the proposed approaches for protecting the internet of things (IOT) devices.
Type: Peer Reviewed Journal Article
URI: http://hdl.handle.net/20.500.11861/9011
ISSN: 2158-107X
DOI: https://doi.org/10.14569/IJACSA.2019.0100641
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