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Equivariant Manifold Neural ODEs and Differential Invariants

Abstract

In this paper we develop a manifestly geometric framework for equivariant manifold neural ordinary differential equations (NODEs), and use it to analyse their modelling capabilities for symmetric data. First, we consider the action of a Lie group GG on a smooth manifold MM and establish the equivalence between equivariance of vector fields, symmetries of the corresponding Cauchy problems, and equivariance of the associated NODEs. We also propose a novel formulation of the equivariant NODEs in terms of the differential invariants of the action of GG on MM, based on Lie theory for symmetries of differential equations, which provides an efficient parameterisation of the space of equivariant vector fields in a way that is agnostic to both the manifold MM and the symmetry group GG. Second, we construct augmented manifold NODEs, through embeddings into equivariant flows, and show that they are universal approximators of equivariant diffeomorphisms on any path-connected MM. Furthermore, we show that the augmented NODEs can be incorporated in the geometric framework and parameterised using higher order differential invariants. Finally, we consider the induced action of GG on different fields on MM and show how it can be used to generalise previous work, on, e.g., continuous normalizing flows, to equivariant models in any geometry.

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