A Deviation Based Outlier Intrusion Detection System

作者: Vikas Pareek , Aditi Mishra , Arpana Sharma , Rashmi Chauhan , Shruti Bansal

DOI: 10.1007/978-3-642-14478-3_39

关键词:

摘要: With the significant increase in use of networks, network security has become more important and challenging. An intrusion detection system plays a major role providing security. This paper proposes model which Artificial Neural Network Data Mining approaches are used together. In this “Self Organizing Map” approach is for behavior learning “Outlier Mining” detecting an intruder. The scope proposed internet. improves capability intruders: both masqueraders misfeasors.

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