Abstract
Intrusion Detection System is a vital feature of protecting network infrastructure from unauthorized users or hackers. Intrusion detection system is used to identify several types of malicious activities that could effect the safety of network and to reduce network traffic. Because of faster growth of Internet, networks are growing rapidly in every area of society. As a result, large amount of data is travelling across many networks which may lead to vulnerability of integrity and confidentiality of data. Many Machine learning models are opened up providing new opportunity to classify traffic in network. In quest to select a good learning model, this paper illustrates performance between J48, Naive Bayes and Random forest classification models. The KDD Cup 99 dataset is used for experimental analysis to identify which classification model improves correctness of data and attains highest accuracy.
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CITATION STYLE
Aishwarya*, Ch., Venkateswaran, N., … Sreeja, V. (2020). Intrusion Detection System using KDD Cup 99 Dataset. International Journal of Innovative Technology and Exploring Engineering, 4(9), 3169–3171. https://doi.org/10.35940/ijitee.d2017.029420
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