Detection of DoS attacks in cloud networks using intelligent rule based classification system

Cloud Network has emerged as one of the most adopted technologies both among the end-users and the developers. Despite cloud networks being popular, security in cloud remains a pivotal research challenge and a topic that is much discussed about. Denial of service (DoS) attack is carried out in cloud...

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Veröffentlicht in:Cluster computing 2019-01, Vol.22 (Suppl 1), p.423-434
Hauptverfasser: Rajendran, Rakesh, Santhosh Kumar, S. V. N., Palanichamy, Yogesh, Arputharaj, Kannan
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container_end_page 434
container_issue Suppl 1
container_start_page 423
container_title Cluster computing
container_volume 22
creator Rajendran, Rakesh
Santhosh Kumar, S. V. N.
Palanichamy, Yogesh
Arputharaj, Kannan
description Cloud Network has emerged as one of the most adopted technologies both among the end-users and the developers. Despite cloud networks being popular, security in cloud remains a pivotal research challenge and a topic that is much discussed about. Denial of service (DoS) attack is carried out in cloud by one or more perpetrators using multiple compromised nodes to flood a specific target and thereby resulting in unavailability of services. Classification methods can be used effectively to identify attack signature or recurring patterns of such DoS attacks. Therefore, classification using machine learning techniques have been used in this work for feature selection and classification in order to identify the DoS attacks. For this purpose, a new rule based approach for detecting the DoS attacks which uses a domain expert’s knowledge has been proposed in this paper. Moreover, two new algorithms namely Feature Selection Algorithm using Scoring and Ranking and Rule based Classification Algorithm for detecting DoS Attacks are proposed in this paper in which the final classification is carried out by applying the rules from the rule base and is validated using a domain-expert. We have evaluated the proposed system on an experimental set-up on cloud and used real time DoS tools and observed that the proposed method achieved better DoS attack detection accuracy than the existing classification algorithms used for security.
doi_str_mv 10.1007/s10586-018-2181-4
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subjects Algorithms
Classification
Cloud computing
Communication
Computer Communication Networks
Computer Science
Data integrity
Data mining
Denial of service attacks
Feature selection
Internet
Intrusion detection systems
Literature reviews
Machine learning
Operating Systems
Privacy
Processor Architectures
Security
Security systems
Software services
title Detection of DoS attacks in cloud networks using intelligent rule based classification system
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