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Remote to Local attack detection using supervised neural network

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3 Author(s)
Iftikhar Ahmad ; DCIS, UTP, Bandar Seri Iskandar, Perak, Malaysia ; Azween B Abdullah ; Abdullah S Alghamdi

In order to determine Remote to Local (R2L) attack, an intrusion detection technique based on artificial neural network is presented. This technique uses sampled dataset from Kddcup99 that is standard for benchmarking of attack detection tools. The backpropagation algorithm is used for training the feedforward neural network. The developed system is applied to R2L attacks. Moreover, experiment indicates this technique has comparatively low false positive rate and false negative rate, consequently it effectively resolves the deficiency of existing intrusion detection approaches.

Published in:

Internet Technology and Secured Transactions (ICITST), 2010 International Conference for

Date of Conference:

8-11 Nov. 2010