基于对抗性机器学习的6g无线网络可持续保护系统构建技术

L. Legashev, L. Grishina
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引用次数: 0

摘要

研究目的是发展新一代通信网络中服务和应用大数据的分析处理技术,以检测网络安全事件,构建基于对抗性机器学习的可持续防护系统。研究方法:分析机器学习和神经网络技术的现代方法,对机器学习模型进行对抗性攻击的算法的综合和形式化。科学新颖性:提出了一种用于检测网络安全事件的服务和应用模拟数据的分析处理技术,为下一代无线网络基础设施中复杂智能服务和应用的安全问题研究提供了基础。研究结果:提出了一种在下一代无线自组织网络中构建可持续防御对抗性攻击的技术。对抗性攻击的主要类型,包括投毒攻击和逃避攻击,进行了形式化描述,并描述了在表格、文本和视觉数据上生成对抗性示例的方法。利用DeepMIMO仿真器生成了多个场景,并对数据集进行了探索性分析。提出了二值分类和对抗性攻击中用户与基站间信号衰减预测的潜在应用问题。以仿真数据为例,介绍了下一代无线网络中针对对抗性攻击的可持续保护系统的构建和训练过程的算法
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THE TECHNIQUE OF BUILDING A SUSTAINABLE PROTECTION SYSTEM BASED ON ADVERSARIAL MACHINE LEARNING IN 6G WIRELESS NETWORKS
Abstract The purpose of research is to develop the technique of analytical processing of big data of services and applications in the new generation communication networks to detect cybersecurity incidents and build sustainable protection systems based on adversarial machine learning. The methods of research: Analysis of modern methods of machine learning and neural network technologies, synthesis and formalization of algorithms for adversarial attacks on machine learning models. Scientific novelty: a technique for analytical processing of emulated data of services and applications for detecting cybersecurity incidents is presented, which provides a groundwork in the field of research into the security issues of complex intelligent services and applications in the infrastructure of wireless networks of the next generation. The result of research: The article proposes a technique of building a sustainable protection system against adversarial attacks in wireless ad hoc networks of the next generation. The main types of adversarial attacks, including poisoning attacks and evasion attacks, are formalized, and methods for generating adversarial examples on tabular, textual, and visual data are described. Several scenarios were generated and exploratory analysis of datasets was carried out using the DeepMIMO emulator. Potential application problems of binary classification and prediction of signal attenuation between a user and a base station for adversarial attacks are presented. The algorithmization of the processes of building and training a sustainable protection system against adversarial attacks in wireless networks of the next generation is presented on the example of emulated data
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