Exploring Hybrid Quantum Classical and Traditional Machining Learning Algorithms for Detecting Cyber Attacks

Authors

  • Jessy Akaabo
  • Collins Ifeanyi Osuji
  • Austin Johnson

DOI:

https://doi.org/10.5281/zenodo.15235829

Keywords:

Hybrid, Quantum, Classical, Machine Learning, Cyber attack.

Abstract

Worldwide internet usage is expanding quickly, creating numerous opportunities in a variety of industries,
such as sports, education, entertainment, and finance. Since network technology has grown and become
more widely used, it is crucial to manage, maintain, and monitor networks in a bid to maximize economic
efficiency and maintain smooth operations. Nonetheless, a major setback of the internet is cyber-attack.
This leverages various tools, techniques, and vulnerabilities in systems, social engineering, insider threats,
malware and ramsomware to get user credentials and gain access to target network and active assets.
This study explores hybrid quantum classical and traditional machining learning algorithms for detecting
cyber attack by analyzing the attributes of transmitted packets in benign and scan samples of network traffic
data collected by Lawrence Berkeley National Laboratory. Several models such as Hybrid quantum
classical model, Convolutional Neural Network, logistic regression, Random Forest, Gradient boosting and
support vector classifier were used for training, evaluation and classification of the network traffic data and
the results reveal that the hybrid quantum classical modeling terms of time efficiency obtained a training
time of 2.36 seconds and evaluation times of 0.02 seconds. In as much as research on quantum computing
just began to gain momentum and without a fully functional quantum computer yet in existence, Quantum
computing algorithms are already in very close competition with known state-of-the-art algorithms, showing
an experimental realization of quantum supremacy over older and existing classical computing

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Published

2025-04-17