cs.AI updates on arXiv.org 09月30日
深度学习优化理论新突破:梯度流线性收敛证明
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本文提出了针对连续梯度下降(梯度流)在线性神经网络的线性收敛性统一证明,覆盖了多项未知架构,并整合了现有结果。

arXiv:2509.23887v1 Announce Type: cross Abstract: A key challenge in modern deep learning theory is to explain the remarkable success of gradient-based optimization methods when training large-scale, complex deep neural networks. Though linear convergence of such methods has been proved for a handful of specific architectures, a united theory still evades researchers. This article presents a unified proof for linear convergence of continuous gradient descent, also called gradient flow, while training any neural network with piecewise non-zero polynomial activations or ReLU, sigmoid activations. Our primary contribution is a single, general theorem that not only covers architectures for which this result was previously unknown but also consolidates existing results under weaker assumptions. While our focus is theoretical and our results are only exact in the infinitesimal step size limit, we nevertheless find excellent empirical agreement between the predictions of our result and those of the practical step-size gradient descent method.

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深度学习 优化理论 梯度流 线性收敛 神经网络
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