TY - GEN
T1 - Artificial Intelligence Service Provision with Secure Federated Learning in Metaverse
AU - Xu, Qichao
AU - Su, Zhou
AU - Cheng, Mengzhen
AU - Wang, Yuntao
AU - Dai, Minghui
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - The Metaverse represents a paradigm-shifting digital ecosystem that seamlessly integrates artificial intelligence (AI) with immersive augmented/virtual reality (AR/VR) systems, delivering intelligent agent-driven services through multi-sensory interaction modalities. However, training AI models in the Metaverse faces significant challenges, including data privacy concerns, communication overhead, and malicious attacks that lead to the uploading of invalid local models, which degrade global model performance and potentially cause system failures. To tackle these challenges, we propose an incentive-driven federated learning (FL) scheme for the Metaverse, designed to counter malicious attacks and encourage honest user participation. Specifically, We first construct a Bayesian game to model the interactions between Metaverse users and AI agents, capturing the strategic decision-making of both AI agent and dishonest users. We analyze the pure-strategy Bayesian Nash equilibrium (BNE) and derive the condition for its existence. When this condition is not met, we further examine a mixed-strategy BNE for more practical scenarios, determining the optimal strategies for all parties. The effectiveness of the proposed scheme is validated through extensive simulations. Experimental results show that the proposed scheme significantly improves AI model accuracy compared to benchmark approaches.
AB - The Metaverse represents a paradigm-shifting digital ecosystem that seamlessly integrates artificial intelligence (AI) with immersive augmented/virtual reality (AR/VR) systems, delivering intelligent agent-driven services through multi-sensory interaction modalities. However, training AI models in the Metaverse faces significant challenges, including data privacy concerns, communication overhead, and malicious attacks that lead to the uploading of invalid local models, which degrade global model performance and potentially cause system failures. To tackle these challenges, we propose an incentive-driven federated learning (FL) scheme for the Metaverse, designed to counter malicious attacks and encourage honest user participation. Specifically, We first construct a Bayesian game to model the interactions between Metaverse users and AI agents, capturing the strategic decision-making of both AI agent and dishonest users. We analyze the pure-strategy Bayesian Nash equilibrium (BNE) and derive the condition for its existence. When this condition is not met, we further examine a mixed-strategy BNE for more practical scenarios, determining the optimal strategies for all parties. The effectiveness of the proposed scheme is validated through extensive simulations. Experimental results show that the proposed scheme significantly improves AI model accuracy compared to benchmark approaches.
KW - Bayesian game
KW - Metaverse
KW - artificial intelligence (AI) model
KW - federated learning (FL)
UR - https://www.scopus.com/pages/publications/105020790330
U2 - 10.1109/MetaCom65502.2025.00056
DO - 10.1109/MetaCom65502.2025.00056
M3 - 会议稿件
AN - SCOPUS:105020790330
T3 - Proceedings - 2025 International Conference on Metaverse Computing, Networking and Applications, MetaCom 2025
SP - 310
EP - 315
BT - Proceedings - 2025 International Conference on Metaverse Computing, Networking and Applications, MetaCom 2025
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 3rd IEEE International Conference on Metaverse Computing, Networking and Applications, MetaCom 2025
Y2 - 27 August 2025 through 29 August 2025
ER -