A Deep Learning Approach for DDoS Attack Detection Using Supervised Learning

  • Tekleselassie H
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Abstract

This research presents a novel combined learning method for developing a novel DDoS model that is expandable and flexible property of deep learning. This method can advance the current practice and problems in DDoS detection. A combined method of deep learning with knowledge-graph classification is proposed for DDoS detection. Whereas deep learning algorithm is used to develop a classifier model, knowledge-graph system makes the model expandable and flexible. It is analytically verified with CICIDS2017 dataset of 53.127 entire occurrences, by using ten-fold cross validation. Experimental outcome indicates that 99.97% performance is registered after connection. Fascinatingly, significant knowledge ironic learning for DDoS detection varies as a basic behavior of DDoS detection and prevention methods. So, security professionals are suggested to mix DDoS detection in their internet and network.

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CITATION STYLE

APA

Tekleselassie, H. (2021). A Deep Learning Approach for DDoS Attack Detection Using Supervised Learning. MATEC Web of Conferences, 348, 01012. https://doi.org/10.1051/matecconf/202134801012

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Lecturer / Post doc 2

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PhD / Post grad / Masters / Doc 2

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Researcher 1

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Engineering 3

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Computer Science 1

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