cs.AI updates on arXiv.org 09月17日
异构联邦学习泛化误差分析
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本文研究了深度联邦回归在两阶段采样模型中的泛化特性,揭示了内在维度在决定深度学习收敛速率中的关键作用,并分析了异构性对误差率的影响。

arXiv:2410.20659v2 Announce Type: replace-cross Abstract: Despite significant research on the optimization aspects of federated learning, the exploration of generalization error, especially in the realm of heterogeneous federated learning, remains an area that has been insufficiently investigated, primarily limited to developments in the parametric regime. This paper delves into the generalization properties of deep federated regression within a two-stage sampling model. Our findings reveal that the intrinsic dimension, characterized by the entropic dimension, plays a pivotal role in determining the convergence rates for deep learners when appropriately chosen network sizes are employed. Specifically, when the true relationship between the response and explanatory variables is described by a $\beta$-H\"older function and one has access to $n$ independent and identically distributed (i.i.d.) samples from $m$ participating clients, for participating clients, the error rate scales at most as $\Tilde{O}((mn)^{-2\beta/(2\beta + \bar{d}{2\beta}(\lambda))})$, whereas for non-participating clients, it scales as $\Tilde{O}(\Delta \cdot m^{-2\beta/(2\beta + \bar{d}{2\beta}(\lambda))} + (mn)^{-2\beta/(2\beta + \bar{d}{2\beta}(\lambda))})$. Here $\bar{d}{2\beta}(\lambda)$ denotes the corresponding $2\beta$-entropic dimension of $\lambda$, the marginal distribution of the explanatory variables. The dependence between the two stages of the sampling scheme is characterized by $\Delta$. Consequently, our findings not only explicitly incorporate the ``heterogeneity" of the clients, but also highlight that the convergence rates of errors of deep federated learners are not contingent on the nominal high dimensionality of the data but rather on its intrinsic dimension.

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联邦学习 泛化误差 异构性 深度学习 收敛速率
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