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The Spectral Bias of Shallow Neural Network Learning is Shaped by the Choice of Non-linearity

Justin Sahs, Ryan Pyle,Fabio Anselmi,Ankit Patel

CoRR(2025)

Cited 0|Views1
Abstract
Despite classical statistical theory predicting severe overfitting, modern massively overparameterized neural networks still generalize well. This unexpected property is attributed to the network's so-called implicit bias, which describes its propensity to converge to solutions that generalize effectively, among the many possible that correctly label the training data. The aim of our research is to explore this bias from a new perspective, focusing on how non-linear activation functions contribute to shaping it. First, we introduce a reparameterization which removes a continuous weight rescaling symmetry. Second, in the kernel regime, we leverage this reparameterization to generalize recent findings that relate shallow Neural Networks to the Radon transform, deriving an explicit formula for the implicit bias induced by a broad class of activation functions. Specifically, by utilizing the connection between the Radon transform and the Fourier transform, we interpret the kernel regime's inductive bias as minimizing a spectral seminorm that penalizes high-frequency components, in a manner dependent on the activation function. Finally, in the adaptive regime, we demonstrate the existence of local dynamical attractors that facilitate the formation of clusters of hyperplanes where the input to a neuron's activation function is zero, yielding alignment between many neurons' response functions. We confirm these theoretical results with simulations. All together, our work provides a deeper understanding of the mechanisms underlying the generalization capabilities of overparameterized neural networks and its relation with the implicit bias, offering potential pathways for designing more efficient and robust models.
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要点】:本文研究了非线激活函数如何塑造浅层神经网络的谱偏,影响其隐式偏见,进而影响网络泛化能力,揭示了激活函数选择与网络泛化性能之间的关联。

方法】:作者通过引入一种重新参数化方法消除了连续权重重缩放对称性,并在核制度下,利用该重新参数化将浅层神经网络与Radon变换联系起来,导出了由一类广泛的激活函数引起的隐式偏见的显式公式。

实验】:通过仿真实验,验证了理论结果,实验使用了不同激活函数的浅层神经网络,并观察了其隐式偏见和泛化能力。