The gradient flow of linear convolutional networks is a Riemannian gradient flow on function space independent of initialization for D-dimensional convolutions with D at least 2 or with stride greater than 1 in 1D.
Function space and critical points of linear convolutional networks
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The Riemannian Geometry Associated to Gradient Flows of Linear Convolutional Networks
The gradient flow of linear convolutional networks is a Riemannian gradient flow on function space independent of initialization for D-dimensional convolutions with D at least 2 or with stride greater than 1 in 1D.