Abstract

In general, the kind of users and the injection of network packets into the internet sectors are not under specific control. There is no clear description as to what packets can be considered normal or abnormal. If the invasions are not detected at the appropriate level, the loss to system may be some times unimaginable. Although many intrusion detection system (IDS) methods are used to detect the existing types of attacks within the network infrastructures, reducing false negative and false positives is still a major issue. In our paper an intrusion detection system is designed to classify by the incorporation of enhanced rules as learnt from the network behavior with less computational complexity of O(n). The method demonstrates the achievements of promising classification rate. The bench mark data KDD Cup99 data is used in our method.

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