Research Area:  Machine Learning
Ensuring reliable update and evolution of a virtual twin in human digital twin (HDT) systems depends on any connectivity scheme implemented between such a virtual twin and its physical counterpart. The adopted connectivity scheme must consider HDT-specific requirements including privacy, security, accuracy and the overall connectivity cost. This paper presents a new, secure, privacy-preserving and efficient human-to-virtual twin connectivity scheme for HDT by integrating three key techniques: differential privacy, federated multi-task learning and blockchain. Specifically, we adopt federated multi-task learning, a personalized learning method capable of providing higher accuracy, to capture the impact of heterogeneous environments. Next, we propose a new validation process based on the quality of trained models during the federated multi-task learning process to guarantee accurate and authorized model evolution in the virtual environment. The proposed framework accelerates the learning process without sacrificing accuracy, privacy and communication costs which, we believe, are non-negotiable requirements of HDT networks. Finally, we compare the proposed connectivity scheme with related solutions and show that the proposed scheme can enhance security, privacy and accuracy while reducing the overall connectivity cost.
Keywords:  
Costs
Privacy
Digital twins
Security
Multitasking
Optimization
Computational modeling
Author(s) Name:  Samuel D. Okegbile; Jun Cai; Hao Zheng
Journal name:  IEEE Journal on Selected Areas in Communications
Conferrence name:  
Publisher name:  IEEE
DOI:  10.1109/JSAC.2023.3310106
Volume Information:  Volume: 41
Paper Link:   https://ieeexplore.ieee.org/abstract/document/10234396