GTG-Shapley: Efficient and Accurate Participant Contribution Evaluation in Federated Learning

Zelei Liu, Yuanyuan Chen, Han Yu, Yang Liu, Li-zhen Cui
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引用次数: 45

Abstract

Federated Learning (FL) bridges the gap between collaborative machine learning and preserving data privacy. To sustain the long-term operation of an FL ecosystem, it is important to attract high-quality data owners with appropriate incentive schemes. As an important building block of such incentive schemes, it is essential to fairly evaluate participants’ contribution to the performance of the final FL model without exposing their private data. Shapley Value (SV)–based techniques have been widely adopted to provide a fair evaluation of FL participant contributions. However, existing approaches incur significant computation costs, making them difficult to apply in practice. In this article, we propose the Guided Truncation Gradient Shapley (GTG-Shapley) approach to address this challenge. It reconstructs FL models from gradient updates for SV calculation instead of repeatedly training with different combinations of FL participants. In addition, we design a guided Monte Carlo sampling approach combined with within-round and between-round truncation to further reduce the number of model reconstructions and evaluations required. This is accomplished through extensive experiments under diverse realistic data distribution settings. The results demonstrate that GTG-Shapley can closely approximate actual Shapley values while significantly increasing computational efficiency compared with the state-of-the-art, especially under non-i.i.d. settings.
GTG-Shapley:联邦学习中高效准确的参与者贡献评估
联邦学习(FL)弥合了协作机器学习和保护数据隐私之间的差距。为了维持FL生态系统的长期运作,重要的是通过适当的激励计划吸引高质量的数据所有者。作为此类激励方案的重要组成部分,公平评估参与者对最终FL模型性能的贡献而不暴露他们的私人数据是至关重要的。基于Shapley值(SV)的技术已被广泛采用,以提供对FL参与者贡献的公平评估。然而,现有的方法产生了巨大的计算成本,使其难以在实际中应用。在本文中,我们提出了引导截断梯度Shapley (GTG-Shapley)方法来解决这一挑战。它通过梯度更新重建FL模型来计算SV,而不是重复训练不同的FL参与者组合。此外,我们设计了一种结合轮内截断和轮间截断的引导蒙特卡罗采样方法,以进一步减少所需的模型重建和评估次数。这是通过在各种现实数据分布设置下的大量实验来完成的。结果表明,GTG-Shapley算法能较好地逼近实际Shapley值,同时显著提高了计算效率,特别是在非id条件下。设置。
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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