Journal of Engineering and Applied Sciences

Year: 2019
Volume: 14
Issue: 9
Page No. 2964 - 2974

A Density Maximization-Fuzzy Means Clustering Algorithm for Network Intrusion Detection

Authors : Ruby and Sandeep Chaurasia

Abstract: Detecting intrusions from the network traffic dataset is one of the demanding and critical task in recent days. This study aims to develop a Density Maximization-Fuzzy Means Clustering (DM-FMC) algorithm for identifying the intrusions from the network traffic datasets. In this process, the raw datasets are preprocessed at the initial stage for removing the irrelevant attributes and to normalize the data for further use. Based on the values of threshold, density and fuzziness index, the cluster is formed by using the DM-FMC technique. In the end, the cluster is categorized to efficiently identify the anomalies from the dataset.

How to cite this article:

Ruby and Sandeep Chaurasia, 2019. A Density Maximization-Fuzzy Means Clustering Algorithm for Network Intrusion Detection. Journal of Engineering and Applied Sciences, 14: 2964-2974.

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