cs.AI updates on arXiv.org 07月24日
Federated Majorize-Minimization: Beyond Parameter Aggregation
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本文提出一种统一设计随机优化算法的方法,适用于联邦学习环境。研究一类主优化-最小化问题,并构建了一种名为SSMM的统一算法,适用于联邦学习环境,同时解决数据异构性、部分参与和通信约束等问题。

arXiv:2507.17534v1 Announce Type: cross Abstract: This paper proposes a unified approach for designing stochastic optimization algorithms that robustly scale to the federated learning setting. Our work studies a class of Majorize-Minimization (MM) problems, which possesses a linearly parameterized family of majorizing surrogate functions. This framework encompasses (proximal) gradient-based algorithms for (regularized) smooth objectives, the Expectation Maximization algorithm, and many problems seen as variational surrogate MM. We show that our framework motivates a unifying algorithm called Stochastic Approximation Stochastic Surrogate MM (\SSMM), which includes previous stochastic MM procedures as special instances. We then extend \SSMM\ to the federated setting, while taking into consideration common bottlenecks such as data heterogeneity, partial participation, and communication constraints; this yields \QSMM. The originality of \QSMM\ is to learn locally and then aggregate information characterizing the \textit{surrogate majorizing function}, contrary to classical algorithms which learn and aggregate the \textit{original parameter}. Finally, to showcase the flexibility of this methodology beyond our theoretical setting, we use it to design an algorithm for computing optimal transport maps in the federated setting.

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联邦学习 随机优化算法 主优化-最小化问题 SSMM算法 数据异构性
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