Clustering based Intrusion Detection System for effective Detection of known and Zero-day Attacks

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Nerella Sameera
M.Siva Jyothi
K.Lakshmaji
V.S.R.Pavan Kumar. Neeli

Abstract

Developing effective security measures is the most challenging task now a days and hence calls for the development of intelligent intrusion detection systems. Most of the existing intrusion detection systems perform best at detecting known attacks but fail to detect zero-day attacks due to the lack of labeled examples. Authors in this paper, comes with a clustering-based IDS framework that can effectively detect both known and zero-day attacks by following unsupervised machine learning techniques. This research uses NSL-KDD dataset for the motive of experimentation and the experimental results exhibit best performance with an accuracy of 78%.

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How to Cite
Nerella Sameera, M.Siva Jyothi, K.Lakshmaji, & V.S.R.Pavan Kumar. Neeli. (2023). Clustering based Intrusion Detection System for effective Detection of known and Zero-day Attacks. Journal of Advanced Zoology, 44(4), 969–975. https://doi.org/10.17762/jaz.v44i4.2423
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