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Reseach Article

Intrusion Detection using a Novel Hybrid Method Incorporating an Improved KNN

by Hossein Shapoorifard, Pirooz Shamsinejad
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 173 - Number 1
Year of Publication: 2017
Authors: Hossein Shapoorifard, Pirooz Shamsinejad
10.5120/ijca2017914340

Hossein Shapoorifard, Pirooz Shamsinejad . Intrusion Detection using a Novel Hybrid Method Incorporating an Improved KNN. International Journal of Computer Applications. 173, 1 ( Sep 2017), 5-9. DOI=10.5120/ijca2017914340

@article{ 10.5120/ijca2017914340,
author = { Hossein Shapoorifard, Pirooz Shamsinejad },
title = { Intrusion Detection using a Novel Hybrid Method Incorporating an Improved KNN },
journal = { International Journal of Computer Applications },
issue_date = { Sep 2017 },
volume = { 173 },
number = { 1 },
month = { Sep },
year = { 2017 },
issn = { 0975-8887 },
pages = { 5-9 },
numpages = {9},
url = { https://ijcaonline.org/archives/volume173/number1/28297-2017914340/ },
doi = { 10.5120/ijca2017914340 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Journal Article
%1 2024-02-07T00:20:04.251379+05:30
%A Hossein Shapoorifard
%A Pirooz Shamsinejad
%T Intrusion Detection using a Novel Hybrid Method Incorporating an Improved KNN
%J International Journal of Computer Applications
%@ 0975-8887
%V 173
%N 1
%P 5-9
%D 2017
%I Foundation of Computer Science (FCS), NY, USA
Abstract

These days, with the tremendous growth of network-based service and shared information on networks, the risk of network attacks and intrusions increases too, therefore network security and protecting the network is getting more significance than before. Intrusion Detection System (IDS) is one of the solutions to detect attacks and anomalies in the network. The ever rising new intrusion or attack types causes difficulties for their detection, therefore Data mining techniques has been widely applied in network intrusion detection systems for extracting useful knowledge from large number of network data to detect intrusions. Many clustering and classification algorithms are used in IDS, therefore improving the functionality of these algorithms will improve IDS performance. This paper focuses on improving KNN classifier in existing intrusion detection task which combines K-MEANS clustering and KNN classification.

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Index Terms

Computer Science
Information Sciences

Keywords

Intrusion Detection System Data Mining Network Security Clustering IDS system K-MEANS K- nearest neighbor K- farthest neighbor CANN.