posted on 2021-11-19, 04:16authored byAhmed Abdullah Alqarni, Nizar Alsharif, Nayeem Ahmad Khan, Lilia Georgieva, Eric PardedeEric Pardede, Mohammed Y. Alzahrani
Abstract: The rapid growth and uptake of network-based communication
technologies have made cybersecurity a significant challenge as the number of
cyber-attacks is also increasing. A number of detection systems are used in an
attempt to detect known attacks using signatures in network traffic. In recent
years, researchers have used different machine learning methods to detect
network attacks without relying on those signatures. The methods generally
have a high false-positive rate which is not adequate for an industry-ready
intrusion detection product. In this study, we propose and implement a new
method that relies on a modular deep neural network for reducing the false
positive rate in the XSS attack detection system. Experiments were performed
using a dataset consists of 1000 malicious and 10000 benign sample. The
model uses 50 features selected by using Pearson correlation method and will
be used in the detection and preventions of XSS attacks. The results obtained
from the experiments depict improvement in the detection accuracy as high as
99.96% compared to other approaches.
History
Publication Date
2022-01-01
Journal
Computers, Materials and Continua
Volume
70
Issue
2
Pagination
11p. (p. 4075-4085)
Publisher
Tech Science Press
ISSN
1546-2218
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