O Learning Deep O()-Equivariant Hyperspheres
In this paper, we utilize hyperspheres and regular -simplexes and propose an approach to learning deep features equivariant under the transformations of D reflections and rotations, encompassed by the powerful group of O. Namely, we propose O-equivariant neurons with spherical decision surfaces that generalize to any dimension , which we call Deep Equivariant Hyperspheres. We demonstrate how to combine them in a network that directly operates on the basis of the input points and propose an invariant operator based on the relation between two points and a sphere, which as we show, turns out to be a Gram matrix. Using synthetic and real-world data in D, we experimentally verify our theoretical contributions and find that our approach is superior to the competing methods for O-equivariant benchmark datasets (classification and regression), demonstrating a favorable speed/performance trade-off. The code is available at https://github.com/pavlo-melnyk/equivariant-hyperspheres.
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