OPTIMIZED INTRUSION DETECTION CLASSIFICATION METHOD USING MACHINE LEARNING
European Journal of Molecular & Clinical Medicine,
2020, Volume 7, Issue 3, Pages 5068-5080
AbstractSecuring a network from the attackers is a challenging task at present as many users involve in variety of computer networks. To protect any individual host in a network or the entire network, some security system must be implemented. In this case, the Intrusion Detection System (IDS) is essential to protect the network from the intruders. The IDS have to deal with a lot of network packets with different characteristics. A signature-based IDS is a potential tool to understand former attacks and to define suitable method to conquest it in variety of applications. Data Mining techniques are used in the process of knowledge discovery for many domains’ problems. Feature Selection plays a vital role for a large number of datasets. This paper discusses on the classification of attacks in the network with the assistance of the proposed Optimized Intrusion Detection Classification technique. In this proposed technique, the DBN hidden layers weights are optimized by using evolutionary Genetic algorithm. This GA is utilized to enhance the classification accuracy by applying the hidden layers of Restricted Boltzmann Machine (RBM). The comparative results show that the proposed classifier gives the improved accuracy, specificity, precision, Sensitivity, and reduced false positive rate, miss rate.
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