An Efficient Classification Mechanism for Network Intrusion Detection System based on Data Mining Techniques:A Survey

Subaira Sulaimam, Anitha P

Abstract



Abstract— In spite of growing information system widely, security has remained one hard-hitting area for computers as well as networks. In information protection, Intrusion Detection System (IDS) is used to safeguard the data confidentiality, integrity and system availability from various types of attacks. Data mining is an efficient artifice applied to intrusion detection to ascertain a new outline from the massive network data as well as it used to reduce the strain of the manual compilations of the normal and abnormal behaviour patterns. This piece of writing reviews the present state of data mining techniques and compares various data mining techniques used to implement an intrusion detection system such as, Support Vector  Machine, Genetic Algorithm, Neural network, Fuzzy Logic, Bayesian Classifier, K- Nearest Neighbour and decision tree Algorithms by highlighting a advantage and disadvantages of each of the techniques.
Keywords—Classification,Data Mining,Intrusion Detection System

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ISSN: 1694-2507 (Print)

ISSN: 1694-2108 (Online)