학술논문

SLIP: Self-Supervised Learning Based Model Inversion and Poisoning Detection-Based Zero-Trust Systems for Vehicular Networks
Document Type
Periodical
Source
IEEE Wireless Communications IEEE Wireless Commun. Wireless Communications, IEEE. 31(2):50-57 Apr, 2024
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Signal Processing and Analysis
Training
Data privacy
Federated learning
Wireless networks
Supervised learning
Self-supervised learning
Data models
Language
ISSN
1536-1284
1558-0687
Abstract
The advances in communication networks and their integration with machine learning technology have paved the way for ubiquitous and prediction-based services for consumers. However, these services consider sensitive and private data for training a machine learning model. With the emergence of model inversion and poisoning attacks, sensitive and private data can be leaked, which is a hindrance for the realization of largescale automation services concerning communication networks. Zero-trust techniques allow the networks to rate the data for their participation in service provisioning tasks, but existing works do not consider model privacy for the zero-trust services. This article proposes a Self-supervised Learning based model Inversion and Poisoning (SLIP) detection framework that enables the rating of model so that network could decide whether the model is suitable for service provisioning or has been compromised. The framework leverages several Generative AI technologies such as generative adversarial networks (GANs) and diffusion models, to realize its implementation in federated learning setting. Experimental results show that the SLIP framework helps in reducing model inversion and poisoning attacks by 16.4% and 13.2% for vehicular networks, respectively.