Equivariant Hamiltonian Flows

30 Sep 2019  ·  Danilo Jimenez Rezende, Sébastien Racanière, Irina Higgins, Peter Toth ·

This paper introduces equivariant hamiltonian flows, a method for learning expressive densities that are invariant with respect to a known Lie-algebra of local symmetry transformations while providing an equivariant representation of the data. We provide proof of principle demonstrations of how such flows can be learnt, as well as how the addition of symmetry invariance constraints can improve data efficiency and generalisation. Finally, we make connections to disentangled representation learning and show how this work relates to a recently proposed definition.

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