Clifford-Steerable Convolutional Neural Networks
Abstract
Clifford-Steerable Convolutional Neural Networks process multivector fields on pseudo-Euclidean spaces using O(p,q)-steerable kernels for improved forecasting in fluid dynamics and relativistic electrodynamics.
We present Clifford-Steerable Convolutional Neural Networks (CS-CNNs), a novel class of E(p, q)-equivariant CNNs. CS-CNNs process multivector fields on pseudo-Euclidean spaces R^{p,q}. They cover, for instance, E(3)-equivariance on R^3 and Poincaré-equivariance on Minkowski spacetime R^{1,3}. Our approach is based on an implicit parametrization of O(p,q)-steerable kernels via Clifford group equivariant neural networks. We significantly and consistently outperform baseline methods on fluid dynamics as well as relativistic electrodynamics forecasting tasks.
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