Neural Discovery of Permutation Subgroups

Abstract

We consider the problem of discovering subgroup HH of permutation group SnS_{n}. Unlike the traditional HH-invariant networks wherein HH is assumed to be known, we present a method to discover the underlying subgroup, given that it satisfies certain conditions. Our results show that one could discover any subgroup of type Sk(k≀n)S_{k} (k \leq n) by learning an SnS_{n}-invariant function and a linear transformation. We also prove similar results for cyclic and dihedral subgroups. Finally, we provide a general theorem that can be extended to discover other subgroups of SnS_{n}. We also demonstrate the applicability of our results through numerical experiments on image-digit sum and symmetric polynomial regression tasks

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