Title of article :
A New Method for Intrusion Detection Using Genetic Algorithm and Neural network
Author/Authors :
hosseinzadehmoghadam ، mohammadreza - Islamic Azad University, Central Tehran Branch , mirabedini ، seyed javad - Islamic Azad University, Central Tehran Branch , banirostam ، toraj - Islamic Azad University, Central Tehran Branch
Pages :
10
From page :
213
To page :
222
Abstract :
In order to provide complete security in a computer system and to prevent intrusion, intrusion detection systems (IDS) are required to detect if an attacker crosses the firewall, antivirus, and other security devices. Data and options to deal with it. In this paper, we are trying to provide a model for combining types of attacks on public data using combined methods of genetic algorithm and neural network. The goal is to make the designed model act as a measure of system attack and combine optimization algorithms to create the ultimate accuracy and reliability for the proposed model and reduce the error rate. To do this, we used a feedback neural network, and by examining the worker, it can be argued that this research with the new approach reduces errors in the classification.
Keywords :
Intrusion Detection System , Neural Network , Genetic Algorithm , Clustring and firewall
Journal title :
Journal of Advances in Computer Engineering and Technology
Serial Year :
2017
Journal title :
Journal of Advances in Computer Engineering and Technology
Record number :
2472770
Link To Document :
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