全局和局部约束条件下的联合学习

Transactions on machine learning research Pub Date : 2024-01-01 Epub Date: 2024-05-03
Chuan He, Le Peng, Ju Sun
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引用次数: 0

摘要

在实践中,许多机器学习(ML)问题都带有约束条件,其应用领域涉及不能与他人共享的分布式敏感数据,例如在医疗保健领域。在这种实际场景中进行协作学习,需要针对有约束条件的 ML 问题进行联合学习(FL),或简称为有约束条件的联合学习。尽管近年来联合学习技术得到了广泛的发展,但这些技术只能处理无约束联合学习问题或具有简单约束条件的联合学习问题,这些约束条件易于预测。处理一般约束条件下的 FL 问题的工作很少。为了填补这一空白,我们迈出了第一步,为解决具有一般约束条件的 FL 问题建立了算法框架。特别是,我们提出了一种基于近似增强拉格朗日(AL)方法的新 FL 算法。假设凸目标和凸约束以及其他温和条件,我们建立了所提算法的最坏情况复杂度。我们的数值实验表明,我们的算法在 FL 环境下执行 Neyman-Pearson 分类和具有非凸约束的公平感知学习时非常有效。
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Federated Learning with Convex Global and Local Constraints.

In practice, many machine learning (ML) problems come with constraints, and their applied domains involve distributed sensitive data that cannot be shared with others, e.g., in healthcare. Collaborative learning in such practical scenarios entails federated learning (FL) for ML problems with constraints, or FL with constraints for short. Despite the extensive developments of FL techniques in recent years, these techniques only deal with unconstrained FL problems or FL problems with simple constraints that are amenable to easy projections. There is little work dealing with FL problems with general constraints. To fill this gap, we take the first step toward building an algorithmic framework for solving FL problems with general constraints. In particular, we propose a new FL algorithm for constrained ML problems based on the proximal augmented Lagrangian (AL) method. Assuming convex objective and convex constraints plus other mild conditions, we establish the worst-case complexity of the proposed algorithm. Our numerical experiments show the effectiveness of our algorithm in performing Neyman-Pearson classification and fairness-aware learning with nonconvex constraints, in an FL setting.

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Federated Learning with Convex Global and Local Constraints. Online model selection by learning how compositional kernels evolve. Beyond Distribution Shift: Spurious Features Through the Lens of Training Dynamics. RIFLE: Imputation and Robust Inference from Low Order Marginals. On the Convergence and Calibration of Deep Learning with Differential Privacy.
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