Intrusion Detection With an Autoencoder and ANOVA Feature Selector

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Date

2021

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Publisher

North Dakota State University

Abstract

Intrusion detection systems are systems that aim at identifying malicious activities or violation of policies in a network. The problem of high dimensionality in intrusion detection systems is a barrier in processing data and analyzing network traffic. This work aims at tackling problems associated with high data dimensionality using a feature selection technique based on one way ANOVA F-test before the classification process. It also involves study of autoencoder as a classification technique for network data as opposed to the traditional use of autoencoders in image data. Experiments have been conducted using the popular NSL-KDD dataset and the results of those experiments are compared with existing literature.

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Keywords

intrusion detection, ANOVA, autoencoder, feature selection, machine learning

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