ANALYSIS OF INTRUSION DETECTION SYSTEM USING MACHINE LEARNING
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Abstract
ntrusion Detection System for network security refers to the technique to detect an unauthorized access on network traffic. For Intrusion Detection System we will discuss about Machine Learning Approaches. It is an emerging field of computer science which can explicitly act with much less human interaction. System learns from the data by pattern recognition and generates optimal solution. In this paper we will analysed types of Machine Learning approaches and had done comparative analysis in it. In the last we will proposed the idea of hybrid technology, which is a combination of host based and network based Intrusion Detection System.
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References
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