CRLGJul 9, 2020

Artificial Intelligence and Machine Learning in 5G Network Security: Opportunities, advantages, and future research trends

arXiv:2007.04490v11 citations
Originality Synthesis-oriented
AI Analysis

It tackles security issues for 5G network operators and users, but it is incremental as it reviews existing applications and suggests future research directions without introducing new methods.

This article addresses the security challenges in 5G networks, such as threats and vulnerabilities, by proposing the use of AI and ML for designing efficient security protocols and automation, though it does not report specific experimental results or numbers.

Recent technological and architectural advancements in 5G networks have proven their worth as the deployment has started over the world. Key performance elevating factor from access to core network are softwareization, cloudification and virtualization of key enabling network functions. Along with the rapid evolution comes the risks, threats and vulnerabilities in the system for those who plan to exploit it. Therefore, ensuring fool proof end-to-end (E2E) security becomes a vital concern. Artificial intelligence (AI) and machine learning (ML) can play vital role in design, modelling and automation of efficient security protocols against diverse and wide range of threats. AI and ML has already proven their effectiveness in different fields for classification, identification and automation with higher accuracy. As 5G networks' primary selling point has been higher data rates and speed, it will be difficult to tackle wide range of threats from different points using typical/traditional protective measures. Therefore, AI and ML can play central role in protecting highly data-driven softwareized and virtualized network components. This article presents AI and ML driven applications for 5G network security, their implications and possible research directions. Also, an overview of key data collection points in 5G architecture for threat classification and anomaly detection are discussed.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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