A Comparative Study of Data Mining Algorithms for High Detection Rate in Intrusion Detection System
Journal: Annals of Emerging Technologies in Computing (AETiC) (Vol.2, No. 1)Publication Date: 2018-01-01
Authors : Nabeela Ashraf; Waqar Ahmad; Rehan Ashraf;
Page : 49-57
Keywords : Intrusion Detection System; Naive Bayes; J48; Random Forest; NSL_KDD dataset;
Abstract
Due to the fast growth and tradition of the internet over the last decades, the network security problems are increasing vigorously. Humans can not handle the speed of processes and the huge amount of data required to handle network anomalies. Therefore, it needs substantial automation in both speed and accuracy. Intrusion Detection System is one of the approaches to recognize illegal access and rare attacks to secure networks. In this proposed paper, Naive Bayes, J48 and Random Forest classifiers are compared to compute the detection rate and accuracy of IDS. For experiments, the KDD_NSL dataset is used.
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Last modified: 2019-01-01 22:25:37