Artificial Neural Network Approaches to Intrusion Detection: A Review

Ahmad, iftikhar and Azween, Abdullah and Alghamdi, Abdullah (2009) Artificial Neural Network Approaches to Intrusion Detection: A Review. In: TELECOMMUNICATIONS and INFORMATICS. World Scientific and Engineering Academy and Society (WSEAS) Stevens Point, Wisconsin, USA , pp. 200-205. ISBN ISBN ~ ISSN:1790-5117 , 978-960-474-084-0.

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Official URL: http://portal.acm.org/citation.cfm?id=1561731.1561...


Intrusion detection systems are the foremost tools for providing safety in computer and network system. There are many limitations in traditional IDSs like time consuming statistical analysis, regular updating, non adaptive, accuracy and flexibility. It is an Artificial Neural Network that supports an ideal specification of an Intrusion Detection System and is a solution to the problems of traditional IDSs. Therefore, An Artificial Neural Network inspired by nervous system has become an interesting tool in the applications of Intrusion Detection Systems due to its promising features. Intrusion detection by Artificial Neural Networks is an ongoing area. In this paper, we provide an introduction and review of the Artificial Neural Network Approaches within Intrusion Detection, in addition to make suggestions for future research. We also discuss on tools and datasets that are being used in Artificial Neural Network Intrusion Detection Systems. This review may help the researcher to develop new optimize approach in the field of Intrusion Detection.

Item Type:Book Section
Uncontrolled Keywords:Artificial Neural Network, Intrusion Detection System, Anomaly Detection, False positive, False Negative, ROC, Detection Rate, RMSE, IDA, MLP
Subjects:Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Departments / MOR / COE:Departments > Computer Information Sciences
ID Code:496
Deposited By: Assoc Prof Dr Azween Abdullah
Deposited On:12 Mar 2010 07:36
Last Modified:19 Jan 2017 08:25

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