A Novel Approach for Network Attack Classification Based on Sequential Questions
Journal: Annals of Emerging Technologies in Computing (AETiC) (Vol.2, No. 2)Publication Date: 2018-04-01
Authors : Md Mehedi Hassan Onik; Nasr Al-Zaben; Hung Phan Hoo; Chul-Soo Kim;
Page : 1-14
Keywords : Network attack taxonomy; Intrusion detection; Network vulnerabilities; Sequential question; Virus attack security; Virus attack classification; Attack taxonomies; Attack Surfaces;
Abstract
With the development of incipient technologies, user devices becoming more exposed and ill-used by foes. In upcoming decades, traditional security measures will not be sufficient enough to handle this huge threat towards distributed hardware and software. Lack of standard network attack taxonomy has become an indispensable dispute on developing a clear understanding about the attacks in order to have an operative protection mechanism. Present attack categorization techniques protect a specific group of threat which has either messed the entire taxonomy structure or ambiguous when one network attacks get blended with few others attacks. Hence, this raises concerns about developing a common and general purpose taxonomy. In this study, a sequential question-answer based model of categorization is proposed. In this article, an intrusion detection framework and threat grouping schema are proposed on the basis of four sequential questions (“Who”, “Where”, “How” and “What”). We have used our method for classifying traditional network attacks in order to identify initiator, source, attack style and seriousness of an attack. Another focus of the paper is to provide a preventive list of actions for network administrator as a guideline to reduce overall attack consequence. Recommended taxonomy is designed to detect common attacks rather than any particular type of attack which can have a practical effect in real life attack classification. From the analysis of the classifications obtained from few infamous attacks, it is obvious that the proposed system holds certain benefits related to the prevailing taxonomies. Future research directions have also been well acknowledged.
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