Equivariant Machine Learning on Graphs with Nonlinear Spectral Filters Ya-Wei Eileen Lin Ron Levie Viterbi Faculty of Electrical and Computer Engineering, Technion
–Neural Information Processing Systems
Equivariant machine learning is an approach for designing deep learning models that respect the symmetries of the problem, with the aim of reducing model complexity and improving generalization. In this paper, we focus on an extension of shift equivariance, which is the basis of convolution networks on images, to general graphs. Unlike images, graphs do not have a natural notion of domain translation. Therefore, we consider the graph functional shifts as the symmetry group: the unitary operators that commute with the graph shift operator. Notably, such symmetries operate in the signal space rather than directly in the spatial space.
Neural Information Processing Systems
Mar-27-2025, 13:07:23 GMT
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- North America > United States (0.14)
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- Research Report > Experimental Study (1.00)
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