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Dynamic learning model update of hybrid-classifiers for intrusion detection

Authors
Cho, JaeikShon, TaeshikChoi, KenMoon, Jongsub
Issue Date
5월-2013
Publisher
SPRINGER
Keywords
Intrusion detection; Machine learning; Data set update; Network security; Pattern recognition
Citation
JOURNAL OF SUPERCOMPUTING, v.64, no.2, pp.522 - 526
Indexed
SCIE
SCOPUS
Journal Title
JOURNAL OF SUPERCOMPUTING
Volume
64
Number
2
Start Page
522
End Page
526
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/103379
DOI
10.1007/s11227-011-0698-x
ISSN
0920-8542
Abstract
Machine Learning as network attack detection is one of the popular methods researched. Signature based network attack detection is no longer convinced the efficiency in the diversified intrusions (Limmer and Dressler in 17th ACM Conference on Computer and Communication Security, 2010). Moreover, as the various Zero-day attacks, non notified attacks cannot be detected (Wu and Banzhaf in Appl Soft Comput 10(1):1-35, 2010). This paper suggests an effective update method of data set on Machine Learning to detect non notified attacks. In addition, this paper compares and verifies the effects of Machine Learning Detection with updated data set to the former methods.
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