Detection of Intrusions using Support Vector Machines and Deep Neural Networks
Author
Abstract

An Intrusion detection system (IDS) plays a role in network intrusion detection through network data analysis, and high detection accuracy, precision, and recall are required to detect intrusions. Also, various techniques such as expert systems, data mining, and state transition analysis are used for network data analysis. The paper compares the detection effects of the two IDS methods using data mining. The first technique is a support vector machine (SVM), a machine learning algorithm; the second is a deep neural network (DNN), one of the artificial neural network models. The accuracy, precision, and recall were calculated and compared using NSL-KDD training and validation data, which is widely used in intrusion detection to compare the detection effects of the two techniques. DNN shows slightly higher accuracy than the SVM model. The risk of recognizing an actual intrusion as normal data is much greater than the risk of considering normal data as an intrusion, so DNN proves to be much more effective in intrusion detection than SVM.

Year of Publication
2022
Date Published
oct
Publisher
IEEE
Conference Location
Noida, India
ISBN Number
978-1-66547-433-7
URL
https://ieeexplore.ieee.org/document/9964756/
DOI
10.1109/ICRITO56286.2022.9964756
Google Scholar | BibTeX | DOI