A Hybrid Approach based on Classification and Clustering for Intrusion Detection System
Author(s) -
Jasmeen Kaur Chahal,
Amanjot Kaur
Publication year - 2016
Publication title -
international journal of mathematical sciences and computing
Language(s) - English
Resource type - Journals
eISSN - 2310-9033
pISSN - 2310-9025
DOI - 10.5815/ijmsc.2016.04.04
Subject(s) - computer science , intrusion detection system , false positive rate , cluster analysis , support vector machine , data mining , cluster (spacecraft) , anomaly based intrusion detection system , artificial intelligence , pattern recognition (psychology) , computer network
Computer security plays an important role in everybody’s life. Therefore, to protect the computer and sensitive information from the untrusted parties have great significance. Intrusion detection system helps us to detect these malicious activities and sends the reports to the administration. But there is a problem of high false positive rate and low false negative rate. To eliminate these problems, hybrid system is proposed which is divided into two main parts. First, cluster the data using K-Mean algorithm and second, is to classify the train data using Adaptive-SVM algorithm. The experiments is carried out to evaluate the performance of proposed system is on NSL-KDD dataset. The results of proposed system clearly give better accuracy and low false positive rule and high false negative rate.
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