The Convergence Rate of Neural Networks for Learned Functions of Different Frequencies
Ronen, Basri, Jacobs, David, Kasten, Yoni, Kritchman, Shira
–Neural Information Processing Systems
We study the relationship between the frequency of a function and the speed at which a neural network learns it. We build on recent results that show that the dynamics of overparameterized neural networks trained with gradient descent can be well approximated by a linear system. When normalized training data is uniformly distributed on a hypersphere, the eigenfunctions of this linear system are spherical harmonic functions. We derive the corresponding eigenvalues for each frequency after introducing a bias term in the model. This bias term had been omitted from the linear network model without significantly affecting previous theoretical results.
Neural Information Processing Systems
Mar-18-2020, 22:18:18 GMT
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