SecureFedPROM: A Zero-Trust Federated Learning Approach With Multi-Criteria Client Selection

Mehreen Tahir;Tanjila Mawla;Feras Awaysheh;Sadi Alawadi;Maanak Gupta;Muhammad Intizar Ali
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Abstract

Federated Learning (FL) enables decentralized learning while preserving data privacy. However, ensuring security and optimizing resource utilization in FL remains challenging, particularly in untrusted environments. To address this, we propose SecureFedPROM, a novel zero-trust FL framework that integrates Attribute-Based Access Control (ABAC) for secure client authorization and Preference Ranking Organization Method for Enrichment of Evaluations (PROMETHEE) for dynamic, multi-criteria client selection. Unlike traditional FL client selection methods that prioritize security or efficiency, SecureFedPROM optimizes trustworthiness, computational efficiency, and performance, ensuring robust participation in each training round. We evaluate SecureFedPROM across multiple real-world datasets, demonstrating its superiority over state-of-the-art client selection protocols. Our results show that SecureFedPROM achieves a 7.19% improvement in model accuracy, accelerates convergence, and reduces the number of training rounds. Additionally, it minimizes wall-clock time and computational overhead, making it highly scalable for edge AI environments. These findings highlight the importance of integrating zero-trust security principles with multi-criteria decision-making to enhance security and efficiency in FL.
SecureFedPROM:一种多标准客户端选择的零信任联邦学习方法
联邦学习(FL)支持分散学习,同时保护数据隐私。然而,在FL中确保安全和优化资源利用仍然具有挑战性,特别是在不受信任的环境中。为了解决这个问题,我们提出了SecureFedPROM,这是一个新的零信任FL框架,它集成了用于安全客户端授权的基于属性的访问控制(ABAC)和用于丰富评估的偏好排序组织方法(PROMETHEE),用于动态,多标准客户端选择。与传统的优先考虑安全性或效率的FL客户端选择方法不同,SecureFedPROM优化了可信度、计算效率和性能,确保了每一轮培训的稳健参与。我们在多个真实世界的数据集上对SecureFedPROM进行了评估,证明了其优于最先进的客户端选择协议。我们的结果表明,SecureFedPROM在模型精度上提高了7.19%,加速了收敛,并减少了训练轮数。此外,它最大限度地减少了挂钟时间和计算开销,使其在边缘AI环境中具有高度可扩展性。这些发现强调了将零信任安全原则与多标准决策相结合以提高FL的安全性和效率的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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