SEAL: An Open, Auditable, and Fair Data Generation Framework for AI-Native 6G Networks
AI 摘要
SEAL框架通过伦理审计和联邦学习,生成更公平、可审计的6G合成数据,提升AI模型训练效果。
主要贡献
- 提出SEAL框架,用于生成合规且公平的6G合成数据
- 集成ERCD模块,实现伦理和法规遵从
- 引入FL反馈系统,缩小仿真与现实差距
方法论
SEAL框架结合伦理审计设计模块(ERCD)和联邦学习(FL)反馈系统,优化合成数据生成流程,提升数据质量。
原文摘要
AI-native 6G networks promise to transform the telecom industry by enabling dynamic resource allocation, predictive maintenance, and ultra-reliable low-latency communications across all layers, which are essential for applications such as smart cities, autonomous vehicles, and immersive XR. However, the deployment of 6G systems results in severe data scarcity, hindering the training of efficient AI models. Synthetic data generation is extensively used to fill this gap; however, it introduces challenges related to dataset bias, auditability, and compliance with regulatory frameworks. In this regard, we propose the Synthetic Data Generation with Ethics Audit Loop (SEAL) framework, which extends baseline modular pipelines with an Ethical and Regulatory Compliance by Design (ERCD) module and a Federated Learning (FL) feedback system. The ERCD integrates fairness, bias detection, and standardized audit trails for regulatory mapping, while the FL enables privacy-preserving calibration using aggregated insights from real testbeds to close the reality-simulation gap. Results show that the SEAL framework outperforms existing methods in terms of Frechet Inception Distance, equalized odds, and accuracy. These results validate the framework's ability to generate auditable and bias-mitigated synthetic data for responsible AI-native 6G development.