DocumentCode :
3626463
Title :
Increasing Detection Rate of User-to-Root Attacks Using Genetic Algorithms
Author :
Zorana Bankovic;Slobodan Bojanic;Octavio Nieto-Taladriz;Atta Badii
Author_Institution :
Universidad Polit?cnica de Madrid
fYear :
2007
Firstpage :
48
Lastpage :
53
Abstract :
An extensive set of machine learning and pattern classification techniques trained and tested on KDD dataset failed in detecting most of the user-to-root attacks. This paper aims to provide an approach for mitigating negative aspects of the mentioned dataset, which led to low detection rates. Genetic algorithm is employed to implement rules for detecting various types of attacks. Rules are formed of the features of the dataset identified as the most important ones for each attack type. In this way we introduce high level of generality and thus achieve high detection rates, but also gain high reduction of the system training time. Thenceforth we re-check the decision of the user-to- root rules with the rules that detect other types of attacks. In this way we decrease the false-positive rate. The model was verified on KDD 99, demonstrating higher detection rates than those reported by the state- of-the-art while maintaining low false-positive rate.
Keywords :
"Genetic algorithms","Intrusion detection","Machine learning algorithms","Protection","System testing","Pattern recognition","Filters","Benchmark testing","Information security","Machine learning"
Publisher :
ieee
Conference_Titel :
Emerging Security Information, Systems, and Technologies, 2007. SecureWare 2007. The International Conference on
ISSN :
2162-2108
Print_ISBN :
0-7695-2989-5;978-0-7695-2989-9
Electronic_ISBN :
2162-2116
Type :
conf
DOI :
10.1109/SECUREWARE.2007.4385309
Filename :
4385309
Link To Document :
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