Federated Latent Space Alignment for Multi-user Semantic Communications
AI 摘要
提出一种联邦学习的语义通信方法,通过对齐潜在空间提高多用户语义通信的准确性。
主要贡献
- 提出了一种基于联邦学习的语义预均衡器和均衡器方案
- 解决了多用户语义通信中潜在空间不对齐问题
- 在准确性、通信开销和复杂性之间实现了权衡
方法论
采用联邦优化算法,在接入点和用户端分布式训练语义均衡器,实现潜在空间的对齐。
原文摘要
Semantic communication aims to convey meaning for effective task execution, but differing latent representations in AI-native devices can cause semantic mismatches that hinder mutual understanding. This paper introduces a novel approach to mitigating latent space misalignment in multi-agent AI- native semantic communications. In a downlink scenario, we consider an access point (AP) communicating with multiple users to accomplish a specific AI-driven task. Our method implements a protocol that shares a semantic pre-equalizer at the AP and local semantic equalizers at user devices, fostering mutual understanding and task-oriented communication while considering power and complexity constraints. To achieve this, we employ a federated optimization for the decentralized training of the semantic equalizers at the AP and user sides. Numerical results validate the proposed approach in goal-oriented semantic communication, revealing key trade-offs among accuracy, com- munication overhead, complexity, and the semantic proximity of AI-native communication devices.