A New Networks Intrusion Detection Architecture based on Neural Networks

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Berlin H. LekagningK Djionang
Berlin H. LekagningK Djionang
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Berlin H. Lekagning Djionang
Berlin H. Lekagning Djionang
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Dr. Gilbert Tindo
Dr. Gilbert Tindo
α Université de Yaoundé I Université de Yaoundé I

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A New Networks Intrusion Detection Architecture based on Neural Networks

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Abstract

Networks intrusion detection systems allow to detect attacks which cannot be detected by firewalls. The false positive and false negative problem tend to make IDS inefficient. To improve those systems’ performances, it is necessary to select the most relevant that will lead to characterize a normal profile or an attack. We have proposed in this paper a new intrusion detection system architecture and a scheme to flexibly select groups of attributes using neural networks in order to improve results that we have got with our architecture. The selection approach is based on a contribution criteria that we have defined in function of precision measures of type HVS (Heuristic for Variable Selection).The selected subset depends on a threshold that we make vary in function of a defined criteria. He have done a comparative study of this approach and the one without attributes selection.

References

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Funding

No external funding was declared for this work.

Conflict of Interest

The authors declare no conflict of interest.

Ethical Approval

No ethics committee approval was required for this article type.

Data Availability

Not applicable for this article.

How to Cite This Article

Berlin H. LekagningK Djionang. 2017. \u201cA New Networks Intrusion Detection Architecture based on Neural Networks\u201d. Global Journal of Computer Science and Technology - E: Network, Web & Security GJCST-E Volume 17 (GJCST Volume 17 Issue E1): .

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Issue Cover
GJCST Volume 17 Issue E1
Pg. 39- 47
Journal Specifications

Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

Keywords
Classification
GJCST-E Classification: C.2.1, C.2.2
Version of record

v1.2

Issue date

March 11, 2017

Language
en
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Networks intrusion detection systems allow to detect attacks which cannot be detected by firewalls. The false positive and false negative problem tend to make IDS inefficient. To improve those systems’ performances, it is necessary to select the most relevant that will lead to characterize a normal profile or an attack. We have proposed in this paper a new intrusion detection system architecture and a scheme to flexibly select groups of attributes using neural networks in order to improve results that we have got with our architecture. The selection approach is based on a contribution criteria that we have defined in function of precision measures of type HVS (Heuristic for Variable Selection).The selected subset depends on a threshold that we make vary in function of a defined criteria. He have done a comparative study of this approach and the one without attributes selection.

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A New Networks Intrusion Detection Architecture based on Neural Networks

Berlin H. Lekagning Djionang
Berlin H. Lekagning Djionang
Dr. Gilbert Tindo
Dr. Gilbert Tindo

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