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     Research Journal of Applied Sciences, Engineering and Technology

    Abstract
2014(Vol.7, Issue:16)
Article Information:

An Adaptive Hybrid Multi-level Intelligent Intrusion Detection System for Network Security

P. Ananthi and P. Balasubramanie
Corresponding Author:  P. Ananthi 
Submitted: October 03, 2013
Accepted: November 21, 2013
Published: April 25, 2014
Abstract:
Intrusion Detection System (IDS) plays a vital factor in providing security to the networks through detecting malicious activities. Due to the extensive advancements in the computer networking, IDS has become an active area of research to determine various types of attacks in the networks. A large number of intrusion detection approaches are available in the literature using several traditional statistical and data mining approaches. Data mining techniques in IDS observed to provide significant results. Data mining approaches for misuse and anomaly-based intrusion detection generally include supervised, unsupervised and outlier approaches. It is important that the efficiency and potential of IDS be updated based on the criteria of new attacks. This study proposes a novel Adaptive Hybrid Multi-level Intelligent IDS (AHMIIDS) system which is the combined version of anomaly and misuse detection techniques. The anomaly detection is based on Bayesian Networks and then the misuse detection is performed using Adaptive Neuro Fuzzy Inference System (ANFIS). The outputs of both anomaly detection and misuse detection modules are applied to Decision Table Majority (DTM) to perform the final decision making. A rule-base approach is used in this system. It is observed from the results that the proposed AHMIIDS performs better than other conventional hybrid IDS.

Key words:  Adaptive neuro fuzzy inference system, classifier, decision table majority, intrusion detection system, , ,
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Cite this Reference:
P. Ananthi and P. Balasubramanie, . An Adaptive Hybrid Multi-level Intelligent Intrusion Detection System for Network Security. Research Journal of Applied Sciences, Engineering and Technology, (16): 3348-3355.
ISSN (Online):  2040-7467
ISSN (Print):   2040-7459
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