Why Shallow Networks Struggle with Approximating and Learning High Frequency: A Numerical Study

29 Jun 2023  ·  Shijun Zhang, Hongkai Zhao, Yimin Zhong, Haomin Zhou ·

In this work, a comprehensive numerical study involving analysis and experiments shows why a two-layer neural network has difficulties handling high frequencies in approximation and learning when machine precision and computation cost are important factors in real practice. In particular, the following basic computational issues are investigated: (1) the minimal numerical error one can achieve given a finite machine precision, (2) the computation cost to achieve a given accuracy, and (3) stability with respect to perturbations. The key to the study is the conditioning of the representation and its learning dynamics. Explicit answers to the above questions with numerical verifications are presented.

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