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JOURNALS // Program Systems: Theory and Applications // Archive

Program Systems: Theory and Applications, 2025 Volume 16, Issue 3, Pages 3–22 (Mi ps471)

Hardware, software and distributed supercomputer systems

Quantum machine learning methods for intrusion detection in software-defined networks

I. A. Antonova, I. I. Kurochkinb

a National University of Science and Technology MISIS, Moscow, Russia
b Institute for Information Transmission Problems of RAS, Moscow, Russia

Abstract: Software-defined network architecture is the preferred way to build large computer networks that require high responsiveness to change and a high degree of automation. The main feature of this architecture is the centralized management of the entire network from a single controller. However, this approach opens new opportunities for attacks on the network, making the controller their main target. This paper explores the possibility of applying quantum machine learning models to detect such attacks.

Key words and phrases: software-defined networks, information security, machine learning, neural networks, quantum computing, intrusion detection systems, SDN, IDS.

UDC: 004.272.45
BBK: 32.971.321.1

MSC: Primary 65Y05; Secondary 68Q10

Received: 10.03.2025
Accepted: 22.05.2025

DOI: 10.25209/2079-3316-2025-16-3-3-22



© Steklov Math. Inst. of RAS, 2025