AI RESEARCH
Neural Networks as Local-to-Global Computations
arXiv CS.LG
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ArXi:2603.14831v1 Announce Type: cross We construct a cellular sheaf from any feedforward ReLU neural network by placing one vertex for each intermediate quantity in the forward pass and encoding each computational step - affine transformation, activation, output - as a restriction map on an edge. The restricted coboundary operator on the free coordinates is unitriangular, so its determinant is $1$ and the restricted Laplacian is positive definite for every activation pattern.