Paper Title :A Hybrid Intrusion Detection System Using Particle Swarm Optimization For Feature Selection
Author :Sedigheh Khajouei Nejad, Sam Jabbehdari, Mohammad Hossein Moattar
Article Citation :Sedigheh Khajouei Nejad ,Sam Jabbehdari ,Mohammad Hossein Moattar ,
(2015 ) " A Hybrid Intrusion Detection System Using Particle Swarm Optimization For Feature Selection " ,
International Journal of Soft Computing And Artificial Intelligence (IJSCAI) ,
pp. 55-58,
Volume-3,Issue-2
Abstract : The ultimate goal of this paper is to develop systems for intrusion detection in computer networks to achieve the
best accuracy performance. This study suggests the idea of classifier combination. This hybrid approach is based on
optimization and feature selection using a combination of two-step approach for the classification. In the first step, using
Accelerated Particle Swarm Optimization (APSO) algorithm, a set of best discriminating features is selected. Then using a
combination of three classifiers namely KNN, Decision Tree and Neural Network, intermediate data is generated. Finally these
data is fed to the AdaboostM2 classifier for final decision. The performance of the proposed approach is evaluated with criteria
such as F measure, Accuracy and False Alarm. Experiments on KDD-CUP99 dataset show the effectiveness of the proposed
approach compared to the most recent approaches in this context.
Index Terms- Intrusion Detection, Hybrid Classifier, Particle Swarm Optimization, Adaboost, Feature selection
Type : Research paper
Published : Volume-3,Issue-2
DOIONLINE NO - IJSCAI-IRAJ-DOIONLINE-3500
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Copyright: © Institute of Research and Journals
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Published on 2015-12-28 |
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