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Approximation capabilities of measure-preserving neural networks

Neural Networks (NN), 2021
Abstract

Measure-preserving neural networks are well-developed invertible models, however, the approximation capabilities remain unexplored. This paper rigorously establishes the general sufficient conditions for approximating measure-preserving maps using measure-preserving neural networks. It is shown that for compact URDU \subset \R^D with D2D\geq 2, every measure-preserving map ψ:URD\psi: U\to \R^D which is injective and bounded can be approximated in the LpL^p-norm by measure-preserving neural networks. Specifically, the differentiable maps with ±1\pm 1 determinants of Jacobians are measure-preserving, injective and bounded on UU, thus hold the approximation property.

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