2019
DOI: 10.17694/bajece.563167
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A Clustering Approach for Intrusion Detection with Big Data Processing on Parallel Computing Platform

Abstract: In recent years there is a growing number of attacks in the computer networks. Therefore, the use of a prevention mechanism is an inevitable need for security admins. Although firewalls are preferred as the first layer of protection, it is not sufficient for preventing lots of the attacks, especially from the insider attacks. Intrusion Detection Systems (IDSs) have emerged as an effective solution to these types of attacks. For increasing the efficiency of the IDS system, a dynamic solution, which can adapt it… Show more

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Cited by 8 publications
(2 citation statements)
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“…The final dataset contains over 150,000 data points. This dataset comprises 7853 DoS attack testing results and 53,385 DoS attack training results [190]. The dataset is available for free download at [191] in flow-based format.…”
Section: Nsl-kddmentioning
confidence: 99%
“…The final dataset contains over 150,000 data points. This dataset comprises 7853 DoS attack testing results and 53,385 DoS attack training results [190]. The dataset is available for free download at [191] in flow-based format.…”
Section: Nsl-kddmentioning
confidence: 99%
“…Intrusion detection is a widely researched subject in literature (Özgür & Erdem 2012, Sahingoz 2019. In our example problem, an intrusion detection classifier should be decided for a resource constrained environment, such as a micro-controller with a low RAM and less powerful CPU environment.…”
Section: Decision Analysis and Resolution (Dar): Intrusion Detection mentioning
confidence: 99%