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Paper Details
Paper Title
A Data Mining Approach for Intrusion Detection System Using Boosted Decision Tree Approach
Authors
  Priyanka B Bera,  Ishan K Rajani
Abstract
Data mining is the technique to handle the large amount of data. These data must be secured from the suspicious things. New intelligent Intrusion Detection Systems (IDSs) which are based on sophisticated algorithms rather than current signature-base detections are in demand. There is often the need to update an installed Intrusion Detection System (IDS) due to new attack methods or upgraded computing environments. Since many current Intrusion Detection Systems are constructed by manual encoding of expert knowledge, changes to them are expensive and slow. In data mining-based intrusion detection system, we should make use of particular domain knowledge in relation to intrusion detection in order to efficiently extract relative rules from large amounts of records. This paper proposes new ensemble boosted decision tree approach for intrusion detection system. Experimental results shows better results for detecting intrusions as compared to others existing methods.
Keywords- boosted decision trees, data mining, ensemble approach, network intrusion detection system
Publication Details
Unique Identification Number - IJEDR1504140Page Number(s) - 794-798Pubished in - Volume 3 | Issue 4 | December 2015DOI (Digital Object Identifier) -    Publisher - IJEDR (ISSN - 2321-9939)
Cite this Article
  Priyanka B Bera,  Ishan K Rajani,   "A Data Mining Approach for Intrusion Detection System Using Boosted Decision Tree Approach ", International Journal of Engineering Development and Research (IJEDR), ISSN:2321-9939, Volume.3, Issue 4, pp.794-798, December 2015, Available at :http://www.ijedr.org/papers/IJEDR1504140.pdf
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