Title
When Machine Learning Meets Privacy in 6G: A Survey
Abstract
The rapid-developing Artificial Intelligence (AI) technology, fast-growing network traffic, and emerging intelligent applications (e.g., autonomous driving, virtual reality, etc.) urgently require a new, faster, more reliable and flexible network form. At this time, researchers in both industry and academia have turned their attention to the sixth generation (6G) communication networks. In the 6G vision, various intelligent application scenarios that utilize Machine Learning (ML) technology (the most important branch of AI) will bring rich heterogeneous connections, as well as massive information storage and operations. When ML meets 6G, new opportunities will emerge along with numerous privacy challenges. On one hand, a secure ML structure, or the correct application of ML, can protect privacy in 6G. On the other hand, ML may be attacked or abused, resulting in privacy violation. It is worth noting that the alliance between 6G and ML may also be a double-edged sword in many cases, rather than absolutely infringe or protect privacy. Therefore, based on lots of existing meaningful works, this paper aims to provide a comprehensive survey of ML and privacy in 6G, with a view to further promoting the development of 6G and privacy protection technologies.
Year
DOI
Venue
2020
10.1109/COMST.2020.3011561
IEEE Communications Surveys & Tutorials
Keywords
DocType
Volume
Privacy,machine learning,6G,violation,protection,communication,double-edged sword
Journal
22
Issue
Citations 
PageRank 
4
13
0.46
References 
Authors
0
5
Name
Order
Citations
PageRank
Yuanyuan Sun12910.90
Jiajia Liu2137294.60
Jiadai Wang3723.38
Yurui Cao4130.79
Nei Kato53982263.66