Connecting Permutation Equivariant Neural Networks and Partition Diagrams
Abstract: Permutation equivariant neural networks are often constructed using tensor powers of $\mathbb{R}{n}$ as their layer spaces. We show that all of the weight matrices that appear in these neural networks can be obtained from Schur-Weyl duality between the symmetric group and the partition algebra. In particular, we adapt Schur-Weyl duality to derive a simple, diagrammatic method for calculating the weight matrices themselves.
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