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Intrusion Detection with Classification and On-Line Clustering Using Reinforcement Learning

Tiyas, Indah Yulia Prafitaning and Barakbah, Ali Ridho and Harsono, Tri and Sudarsono, Amang (2014) Intrusion Detection with Classification and On-Line Clustering Using Reinforcement Learning. EMITTER International Journal of Engineering Technology, 02 (01). pp. 39-49. ISSN 2355-391X

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    Today, information technology is growing rapidly,all information can be obtained much easier. It raises some new problems, one of them is unauthorized access to the system. We need a reliable network security system that is resistant to a variety of attacks against the system. Therefore, Intrusion Detection System (IDS) required to overcome the problems of intrusions. Many researches have been done on intrusion detection using classification methods. Classification methodshave high precision, but it takes efforts to determine an appropriate classification model to the classification problem. In this paper, we propose a new reinforced approach to detect intrusion with On-line Clustering using Reinforcement Learning. Reinforcement Learning is a new paradigm in machine learning which involves interaction with the environment.It works with reward and punishment mechanism to achieve solution. We apply the Reinforcement Learning to the intrusion detection problem with considering competitive learning using Pursuit Reinforcement Competitive Learning (PRCL). Based on the experimental result, PRCL can detect intrusions in real time with high accuracy (99.816% for DoS, 95.015% for Probe, 94.731% for R2L and 99.373% for U2R) and high speed (44 ms). The proposed approach can help network administrators to detect intrusion, so the computer network security systembecome reliable.

    Item Type: Article
    Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
    Divisions: Faculty of Engineering, Science and Mathematics > School of Electronics and Computer Science
    Depositing User: Dr. Ali Ridho Barakbah
    Date Deposited: 22 Mar 2015 12:16
    Last Modified: 22 Mar 2015 12:16

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