Paper
17 April 2006 Distributed intrusion detection system based on fuzzy rules
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Abstract
Computational Intelligence is the theory and method solving problems by simulating the intelligence of human using computer and it is the development of Artificial Intelligence. Fuzzy Technique is one of the most important theories of computational Intelligence. Genetic Fuzzy Technique and Neuro-Fuzzy Technique are the combination of Fuzzy Technique and novel techniques. This paper gives a distributed intrusion detection system based on fuzzy rules that has the characters of distributed parallel processing, self-organization, self-learning and self-adaptation by the using of Neuro-Fuzzy Technique and Genetic Fuzzy Technique. Specially, fuzzy decision technique can be used to reduce false detection. The results of the simulation experiment show that this intrusion detection system model has the characteristics of distributed, error tolerance, dynamic learning, and adaptation. It solves the problem of low identifying rate to new attacks and hidden attacks. The false detection rate is low. This approach is efficient to the distributed intrusion detection.
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Peili Qiao, Jie Su, and Yahui Liu "Distributed intrusion detection system based on fuzzy rules", Proc. SPIE 6241, Data Mining, Intrusion Detection, Information Assurance, and Data Networks Security 2006, 62410F (17 April 2006); https://doi.org/10.1117/12.665177
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Cited by 1 scholarly publication.
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KEYWORDS
Fuzzy logic

Sensors

Computer intrusion detection

Distributed computing

Fuzzy systems

Genetics

Network security

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